opencv/modules/python/test/test_misc.py

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#!/usr/bin/env python
from __future__ import print_function
import sys
import ctypes
from functools import partial
from collections import namedtuple
import sys
if sys.version_info[0] < 3:
from collections import Sequence
else:
from collections.abc import Sequence
import numpy as np
import cv2 as cv
from tests_common import NewOpenCVTests, unittest
def is_numeric(dtype):
return np.issubdtype(dtype, np.integer) or np.issubdtype(dtype, np.floating)
def get_limits(dtype):
if not is_numeric(dtype):
return None, None
if np.issubdtype(dtype, np.integer):
info = np.iinfo(dtype)
else:
info = np.finfo(dtype)
return info.min, info.max
def get_conversion_error_msg(value, expected, actual):
return 'Conversion "{}" of type "{}" failed\nExpected: "{}" vs Actual "{}"'.format(
value, type(value).__name__, expected, actual
)
def get_no_exception_msg(value):
return 'Exception is not risen for {} of type {}'.format(value, type(value).__name__)
def rpad(src, dst_size, pad_value=0):
"""Extend `src` up to `dst_size` with given value.
Args:
src (np.ndarray | tuple | list): 1d array like object to pad.
dst_size (_type_): Desired `src` size after padding.
pad_value (int, optional): Padding value. Defaults to 0.
Returns:
np.ndarray: 1d array with len == `dst_size`.
"""
src = np.asarray(src)
if len(src.shape) != 1:
raise ValueError("Only 1d arrays are supported")
# Considering the meaning, it is desirable to use np.pad().
# However, the old numpy doesn't include the following fixes and cannot work as expected.
# So an alternative fix that combines np.append() and np.fill() is used.
# https://docs.scipy.org/doc/numpy-1.13.0/release.html#support-for-returning-arrays-of-arbitrary-dimensions-in-apply-along-axis
return np.append(src, np.full( dst_size - len(src), pad_value, dtype=src.dtype) )
def get_ocv_arithm_op_table(apply_saturation=False):
def saturate(func):
def wrapped_func(x, y):
dst_dtype = x.dtype
if apply_saturation:
if np.issubdtype(x.dtype, np.integer):
x = x.astype(np.int64)
# Apply padding or truncation for array-like `y` inputs
if not isinstance(y, (float, int)):
if len(y) > x.shape[-1]:
y = y[:x.shape[-1]]
else:
y = rpad(y, x.shape[-1], pad_value=0)
dst = func(x, y)
if apply_saturation:
min_val, max_val = get_limits(dst_dtype)
dst = np.clip(dst, min_val, max_val)
return dst.astype(dst_dtype)
return wrapped_func
@saturate
def subtract(x, y):
return x - y
@saturate
def add(x, y):
return x + y
@saturate
def divide(x, y):
if not isinstance(y, (int, float)):
dst_dtype = np.result_type(x, y)
y = np.array(y).astype(dst_dtype)
_, max_value = get_limits(dst_dtype)
y[y == 0] = max_value
# to compatible between python2 and python3, it calicurates with float.
# python2: int / int = int
# python3: int / int = float
dst = 1.0 * x / y
if np.issubdtype(x.dtype, np.integer):
dst = np.rint(dst)
return dst
@saturate
def multiply(x, y):
return x * y
@saturate
def absdiff(x, y):
res = np.abs(x - y)
return res
return {
cv.subtract: subtract,
cv.add: add,
cv.multiply: multiply,
cv.divide: divide,
cv.absdiff: absdiff
}
class Bindings(NewOpenCVTests):
def test_inheritance(self):
bm = cv.StereoBM_create()
bm.getPreFilterCap() # from StereoBM
bm.getBlockSize() # from SteroMatcher
boost = cv.ml.Boost_create()
boost.getBoostType() # from ml::Boost
boost.getMaxDepth() # from ml::DTrees
boost.isClassifier() # from ml::StatModel
def test_raiseGeneralException(self):
with self.assertRaises((cv.error,),
msg='C++ exception is not propagated to Python in the right way') as cm:
cv.utils.testRaiseGeneralException()
self.assertEqual(str(cm.exception), 'exception text')
def test_redirectError(self):
try:
cv.imshow("", None) # This causes an assert
self.assertEqual("Dead code", 0)
except cv.error as _e:
pass
handler_called = [False]
def test_error_handler(status, func_name, err_msg, file_name, line):
handler_called[0] = True
cv.redirectError(test_error_handler)
try:
cv.imshow("", None) # This causes an assert
self.assertEqual("Dead code", 0)
except cv.error as _e:
self.assertEqual(handler_called[0], True)
pass
cv.redirectError(None)
try:
cv.imshow("", None) # This causes an assert
self.assertEqual("Dead code", 0)
except cv.error as _e:
pass
def test_overload_resolution_can_choose_correct_overload(self):
val = 123
point = (51, 165)
self.assertEqual(cv.utils.testOverloadResolution(val, point),
'overload (int={}, point=(x={}, y={}))'.format(val, *point),
"Can't select first overload if all arguments are provided as positional")
self.assertEqual(cv.utils.testOverloadResolution(val, point=point),
'overload (int={}, point=(x={}, y={}))'.format(val, *point),
"Can't select first overload if one of the arguments are provided as keyword")
self.assertEqual(cv.utils.testOverloadResolution(val),
'overload (int={}, point=(x=42, y=24))'.format(val),
"Can't select first overload if one of the arguments has default value")
rect = (1, 5, 10, 23)
self.assertEqual(cv.utils.testOverloadResolution(rect),
'overload (rect=(x={}, y={}, w={}, h={}))'.format(*rect),
"Can't select second overload if all arguments are provided")
def test_overload_resolution_fails(self):
def test_overload_resolution(msg, *args, **kwargs):
no_exception_msg = 'Overload resolution failed without any exception for: "{}"'.format(msg)
wrong_exception_msg = 'Overload resolution failed with wrong exception type for: "{}"'.format(msg)
with self.assertRaises((cv.error, Exception), msg=no_exception_msg) as cm:
res = cv.utils.testOverloadResolution(*args, **kwargs)
self.fail("Unexpected result for {}: '{}'".format(msg, res))
self.assertEqual(type(cm.exception), cv.error, wrong_exception_msg)
test_overload_resolution('wrong second arg type (keyword arg)', 5, point=(1, 2, 3))
test_overload_resolution('wrong second arg type', 5, 2)
test_overload_resolution('wrong first arg', 3.4, (12, 21))
test_overload_resolution('wrong first arg, no second arg', 4.5)
test_overload_resolution('wrong args number for first overload', 3, (12, 21), 123)
test_overload_resolution('wrong args number for second overload', (3, 12, 12, 1), (12, 21))
# One of the common problems
test_overload_resolution('rect with float coordinates', (4.5, 4, 2, 1))
test_overload_resolution('rect with wrong number of coordinates', (4, 4, 1))
def test_properties_with_reserved_keywords_names_are_transformed(self):
obj = cv.utils.ClassWithKeywordProperties(except_arg=23)
self.assertTrue(hasattr(obj, "lambda_"),
msg="Class doesn't have RW property with converted name")
try:
obj.lambda_ = 32
except Exception as e:
self.fail("Failed to set value to RW property. Error: {}".format(e))
self.assertTrue(hasattr(obj, "except_"),
msg="Class doesn't have readonly property with converted name")
self.assertEqual(obj.except_, 23,
msg="Can't access readonly property value")
with self.assertRaises(AttributeError):
obj.except_ = 32
def test_maketype(self):
data = {
cv.CV_8UC3: [cv.CV_8U, 3, cv.CV_8UC],
cv.CV_16SC1: [cv.CV_16S, 1, cv.CV_16SC],
cv.CV_32FC4: [cv.CV_32F, 4, cv.CV_32FC],
cv.CV_64FC2: [cv.CV_64F, 2, cv.CV_64FC],
cv.CV_8SC4: [cv.CV_8S, 4, cv.CV_8SC],
cv.CV_16UC2: [cv.CV_16U, 2, cv.CV_16UC],
cv.CV_32SC1: [cv.CV_32S, 1, cv.CV_32SC],
cv.CV_16FC3: [cv.CV_16F, 3, cv.CV_16FC],
}
for ref, (depth, channels, func) in data.items():
self.assertEqual(ref, cv.CV_MAKETYPE(depth, channels))
self.assertEqual(ref, func(channels))
class Arguments(NewOpenCVTests):
def _try_to_convert(self, conversion, value):
try:
result = conversion(value).lower()
except Exception as e:
self.fail(
'{} "{}" is risen for conversion {} of type {}'.format(
type(e).__name__, e, value, type(value).__name__
)
)
else:
return result
def test_InputArray(self):
res1 = cv.utils.dumpInputArray(None)
# self.assertEqual(res1, "InputArray: noArray()") # not supported
self.assertEqual(res1, "InputArray: empty()=true kind=0x00010000 flags=0x01010000 total(-1)=0 dims(-1)=0 size(-1)=0x0 type(-1)=CV_8UC1")
res2_1 = cv.utils.dumpInputArray((1, 2))
self.assertEqual(res2_1, "InputArray: empty()=false kind=0x00010000 flags=0x01010000 total(-1)=2 dims(-1)=2 size(-1)=1x2 type(-1)=CV_64FC1")
res2_2 = cv.utils.dumpInputArray(1.5) # Scalar(1.5, 1.5, 1.5, 1.5)
self.assertEqual(res2_2, "InputArray: empty()=false kind=0x00010000 flags=0x01010000 total(-1)=4 dims(-1)=2 size(-1)=1x4 type(-1)=CV_64FC1")
a = np.array([[1, 2], [3, 4], [5, 6]])
res3 = cv.utils.dumpInputArray(a) # 32SC1
self.assertEqual(res3, "InputArray: empty()=false kind=0x00010000 flags=0x01010000 total(-1)=6 dims(-1)=2 size(-1)=2x3 type(-1)=CV_32SC1")
a = np.array([[[1, 2], [3, 4], [5, 6]]], dtype='f')
res4 = cv.utils.dumpInputArray(a) # 32FC2
self.assertEqual(res4, "InputArray: empty()=false kind=0x00010000 flags=0x01010000 total(-1)=3 dims(-1)=2 size(-1)=3x1 type(-1)=CV_32FC2")
a = np.array([[[1, 2]], [[3, 4]], [[5, 6]]], dtype=float)
res5 = cv.utils.dumpInputArray(a) # 64FC2
self.assertEqual(res5, "InputArray: empty()=false kind=0x00010000 flags=0x01010000 total(-1)=3 dims(-1)=2 size(-1)=1x3 type(-1)=CV_64FC2")
a = np.zeros((2,3,4), dtype='f')
res6 = cv.utils.dumpInputArray(a)
self.assertEqual(res6, "InputArray: empty()=false kind=0x00010000 flags=0x01010000 total(-1)=6 dims(-1)=2 size(-1)=3x2 type(-1)=CV_32FC4")
a = np.zeros((2,3,4,5), dtype='f')
res7 = cv.utils.dumpInputArray(a)
self.assertEqual(res7, "InputArray: empty()=false kind=0x00010000 flags=0x01010000 total(-1)=120 dims(-1)=4 size(-1)=[2 3 4 5] type(-1)=CV_32FC1")
def test_InputArrayOfArrays(self):
res1 = cv.utils.dumpInputArrayOfArrays(None)
# self.assertEqual(res1, "InputArray: noArray()") # not supported
self.assertEqual(res1, "InputArrayOfArrays: empty()=true kind=0x00050000 flags=0x01050000 total(-1)=0 dims(-1)=1 size(-1)=0x0")
res2_1 = cv.utils.dumpInputArrayOfArrays((1, 2)) # { Scalar:all(1), Scalar::all(2) }
self.assertEqual(res2_1, "InputArrayOfArrays: empty()=false kind=0x00050000 flags=0x01050000 total(-1)=2 dims(-1)=1 size(-1)=2x1 type(0)=CV_64FC1 dims(0)=2 size(0)=1x4")
res2_2 = cv.utils.dumpInputArrayOfArrays([1.5])
self.assertEqual(res2_2, "InputArrayOfArrays: empty()=false kind=0x00050000 flags=0x01050000 total(-1)=1 dims(-1)=1 size(-1)=1x1 type(0)=CV_64FC1 dims(0)=2 size(0)=1x4")
a = np.array([[1, 2], [3, 4], [5, 6]])
b = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
res3 = cv.utils.dumpInputArrayOfArrays([a, b])
self.assertEqual(res3, "InputArrayOfArrays: empty()=false kind=0x00050000 flags=0x01050000 total(-1)=2 dims(-1)=1 size(-1)=2x1 type(0)=CV_32SC1 dims(0)=2 size(0)=2x3")
c = np.array([[[1, 2], [3, 4], [5, 6]]], dtype='f')
res4 = cv.utils.dumpInputArrayOfArrays([c, a, b])
self.assertEqual(res4, "InputArrayOfArrays: empty()=false kind=0x00050000 flags=0x01050000 total(-1)=3 dims(-1)=1 size(-1)=3x1 type(0)=CV_32FC2 dims(0)=2 size(0)=3x1")
a = np.zeros((2,3,4), dtype='f')
res5 = cv.utils.dumpInputArrayOfArrays([a, b])
self.assertEqual(res5, "InputArrayOfArrays: empty()=false kind=0x00050000 flags=0x01050000 total(-1)=2 dims(-1)=1 size(-1)=2x1 type(0)=CV_32FC4 dims(0)=2 size(0)=3x2")
# TODO: fix conversion error
#a = np.zeros((2,3,4,5), dtype='f')
#res6 = cv.utils.dumpInputArray([a, b])
#self.assertEqual(res6, "InputArrayOfArrays: empty()=false kind=0x00050000 flags=0x01050000 total(-1)=2 dims(-1)=1 size(-1)=2x1 type(0)=CV_32FC1 dims(0)=4 size(0)=[2 3 4 5]")
def test_unsupported_numpy_data_types_string_description(self):
for dtype in (object, str, np.complex128):
test_array = np.zeros((4, 4, 3), dtype=dtype)
msg = ".*type = {} is not supported".format(test_array.dtype)
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if sys.version_info[0] < 3:
self.assertRaisesRegexp(
Exception, msg, cv.utils.dumpInputArray, test_array
)
else:
self.assertRaisesRegex(
Exception, msg, cv.utils.dumpInputArray, test_array
)
def test_numpy_writeable_flag_is_preserved(self):
array = np.zeros((10, 10, 1), dtype=np.uint8)
array.setflags(write=False)
with self.assertRaises(Exception):
cv.rectangle(array, (0, 0), (5, 5), (255), 2)
def test_20968(self):
pixel = np.uint8([[[40, 50, 200]]])
_ = cv.cvtColor(pixel, cv.COLOR_RGB2BGR) # should not raise exception
def test_parse_to_bool_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpBool)
for convertible_true in (True, 1, 64, np.int8(123), np.int16(11), np.int32(2),
np.int64(1), np.bool_(12)):
actual = try_to_convert(convertible_true)
self.assertEqual('bool: true', actual,
msg=get_conversion_error_msg(convertible_true, 'bool: true', actual))
for convertible_false in (False, 0, np.uint8(0), np.bool_(0), np.int_(0)):
actual = try_to_convert(convertible_false)
self.assertEqual('bool: false', actual,
msg=get_conversion_error_msg(convertible_false, 'bool: false', actual))
def test_parse_to_bool_not_convertible(self):
for not_convertible in (1.2, np.float32(2.3), 's', 'str', (1, 2), [1, 2], complex(1, 1),
complex(imag=2), complex(1.1), np.array([1, 0], dtype=bool)):
with self.assertRaises((TypeError, OverflowError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpBool(not_convertible)
def test_parse_to_bool_convertible_extra(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpBool)
_, max_size_t = get_limits(ctypes.c_size_t)
for convertible_true in (-1, max_size_t):
actual = try_to_convert(convertible_true)
self.assertEqual('bool: true', actual,
msg=get_conversion_error_msg(convertible_true, 'bool: true', actual))
def test_parse_to_bool_not_convertible_extra(self):
for not_convertible in (np.array([False]), np.array([True])):
with self.assertRaises((TypeError, OverflowError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpBool(not_convertible)
def test_parse_to_int_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpInt)
min_int, max_int = get_limits(ctypes.c_int)
for convertible in (-10, -1, 2, int(43.2), np.uint8(15), np.int8(33), np.int16(-13),
np.int32(4), np.int64(345), (23), min_int, max_int, np.int_(33)):
expected = 'int: {0:d}'.format(convertible)
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_int_not_convertible(self):
min_int, max_int = get_limits(ctypes.c_int)
for not_convertible in (1.2, float(3), np.float32(4), np.double(45), 's', 'str',
np.array([1, 2]), (1,), [1, 2], min_int - 1, max_int + 1,
Merge pull request #15915 from VadimLevin:dev/norm_fix Fix implicit conversion from array to scalar in python bindings * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type. * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type.· - Enable tests with wrong conversion behavior - Restrict passing None as value - Restrict bool to integer/floating types conversion * Add PyIntType support for Python 2 * Remove possible narrowing conversion of size_t * Bindings conversion update - Remove unused macro - Add better conversion for types to numpy types descriptors - Add argument name to fail messages - NoneType treated as a valid argument. Better handling will be added as a standalone patch * Add descriptor specialization for size_t * Add check for signed to unsigned integer conversion safety - If signed integer is positive it can be safely converted to unsigned - Add check for plain python 2 objects - Add check for numpy scalars - Add simple type_traits implementation for better code style * Resolve type "overflow" false negative in safe casting check - Move type_traits to separate header * Add copyright message to type_traits.hpp * Limit conversion scope for integral numpy types - Made canBeSafelyCasted specialized only for size_t, so type_traits header became unused and was removed. - Added clarification about descriptor pointer
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complex(1, 1), complex(imag=2), complex(1.1)):
with self.assertRaises((TypeError, OverflowError, ValueError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpInt(not_convertible)
def test_parse_to_int_not_convertible_extra(self):
for not_convertible in (np.bool_(True), True, False, np.float32(2.3),
np.array([3, ], dtype=int), np.array([-2, ], dtype=np.int32),
np.array([11, ], dtype=np.uint8)):
with self.assertRaises((TypeError, OverflowError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpInt(not_convertible)
def test_parse_to_int64_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpInt64)
min_int64, max_int64 = get_limits(ctypes.c_longlong)
for convertible in (-10, -1, 2, int(43.2), np.uint8(15), np.int8(33), np.int16(-13),
np.int32(4), np.int64(345), (23), min_int64, max_int64, np.int_(33)):
expected = 'int64: {0:d}'.format(convertible)
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_int64_not_convertible(self):
min_int64, max_int64 = get_limits(ctypes.c_longlong)
for not_convertible in (1.2, np.float32(4), float(3), np.double(45), 's', 'str',
np.array([1, 2]), (1,), [1, 2], min_int64 - 1, max_int64 + 1,
complex(1, 1), complex(imag=2), complex(1.1), np.bool_(True),
True, False, np.float32(2.3), np.array([3, ], dtype=int),
np.array([-2, ], dtype=np.int32), np.array([11, ], dtype=np.uint8)):
with self.assertRaises((TypeError, OverflowError, ValueError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpInt64(not_convertible)
def test_parse_to_size_t_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpSizeT)
_, max_uint = get_limits(ctypes.c_uint)
Merge pull request #15915 from VadimLevin:dev/norm_fix Fix implicit conversion from array to scalar in python bindings * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type. * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type.· - Enable tests with wrong conversion behavior - Restrict passing None as value - Restrict bool to integer/floating types conversion * Add PyIntType support for Python 2 * Remove possible narrowing conversion of size_t * Bindings conversion update - Remove unused macro - Add better conversion for types to numpy types descriptors - Add argument name to fail messages - NoneType treated as a valid argument. Better handling will be added as a standalone patch * Add descriptor specialization for size_t * Add check for signed to unsigned integer conversion safety - If signed integer is positive it can be safely converted to unsigned - Add check for plain python 2 objects - Add check for numpy scalars - Add simple type_traits implementation for better code style * Resolve type "overflow" false negative in safe casting check - Move type_traits to separate header * Add copyright message to type_traits.hpp * Limit conversion scope for integral numpy types - Made canBeSafelyCasted specialized only for size_t, so type_traits header became unused and was removed. - Added clarification about descriptor pointer
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for convertible in (2, max_uint, (12), np.uint8(34), np.int8(12), np.int16(23),
np.int32(123), np.int64(344), np.uint64(3), np.uint16(2), np.uint32(5),
np.uint(44)):
expected = 'size_t: {0:d}'.format(convertible).lower()
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_size_t_not_convertible(self):
Merge pull request #15915 from VadimLevin:dev/norm_fix Fix implicit conversion from array to scalar in python bindings * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type. * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type.· - Enable tests with wrong conversion behavior - Restrict passing None as value - Restrict bool to integer/floating types conversion * Add PyIntType support for Python 2 * Remove possible narrowing conversion of size_t * Bindings conversion update - Remove unused macro - Add better conversion for types to numpy types descriptors - Add argument name to fail messages - NoneType treated as a valid argument. Better handling will be added as a standalone patch * Add descriptor specialization for size_t * Add check for signed to unsigned integer conversion safety - If signed integer is positive it can be safely converted to unsigned - Add check for plain python 2 objects - Add check for numpy scalars - Add simple type_traits implementation for better code style * Resolve type "overflow" false negative in safe casting check - Move type_traits to separate header * Add copyright message to type_traits.hpp * Limit conversion scope for integral numpy types - Made canBeSafelyCasted specialized only for size_t, so type_traits header became unused and was removed. - Added clarification about descriptor pointer
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min_long, _ = get_limits(ctypes.c_long)
for not_convertible in (1.2, True, False, np.bool_(True), np.float32(4), float(3),
Merge pull request #15915 from VadimLevin:dev/norm_fix Fix implicit conversion from array to scalar in python bindings * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type. * Fix wrong conversion behavior for primitive types - Introduce ArgTypeInfo namedtuple instead of plain tuple. If strict conversion parameter for type is set to true, it is handled like object argument in PyArg_ParseTupleAndKeywords and converted to concrete type with the appropriate pyopencv_to function call. - Remove deadcode and unused variables. - Fix implicit conversion from numpy array with 1 element to scalar - Fix narrowing conversion to size_t type.· - Enable tests with wrong conversion behavior - Restrict passing None as value - Restrict bool to integer/floating types conversion * Add PyIntType support for Python 2 * Remove possible narrowing conversion of size_t * Bindings conversion update - Remove unused macro - Add better conversion for types to numpy types descriptors - Add argument name to fail messages - NoneType treated as a valid argument. Better handling will be added as a standalone patch * Add descriptor specialization for size_t * Add check for signed to unsigned integer conversion safety - If signed integer is positive it can be safely converted to unsigned - Add check for plain python 2 objects - Add check for numpy scalars - Add simple type_traits implementation for better code style * Resolve type "overflow" false negative in safe casting check - Move type_traits to separate header * Add copyright message to type_traits.hpp * Limit conversion scope for integral numpy types - Made canBeSafelyCasted specialized only for size_t, so type_traits header became unused and was removed. - Added clarification about descriptor pointer
2020-01-13 23:11:34 +08:00
np.double(45), 's', 'str', np.array([1, 2]), (1,), [1, 2],
np.float64(6), complex(1, 1), complex(imag=2), complex(1.1),
-1, min_long, np.int8(-35)):
with self.assertRaises((TypeError, OverflowError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpSizeT(not_convertible)
def test_parse_to_size_t_convertible_extra(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpSizeT)
_, max_size_t = get_limits(ctypes.c_size_t)
for convertible in (max_size_t,):
expected = 'size_t: {0:d}'.format(convertible).lower()
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_size_t_not_convertible_extra(self):
for not_convertible in (np.bool_(True), True, False, np.array([123, ], dtype=np.uint8),):
with self.assertRaises((TypeError, OverflowError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpSizeT(not_convertible)
def test_parse_to_float_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpFloat)
min_float, max_float = get_limits(ctypes.c_float)
for convertible in (2, -13, 1.24, np.float32(32.45), float(32), np.double(12.23),
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np.float32(-12.3), np.float64(3.22), min_float,
max_float, np.inf, -np.inf, float('Inf'), -float('Inf'),
np.double(np.inf), np.double(-np.inf), np.double(float('Inf')),
np.double(-float('Inf'))):
expected = 'Float: {0:.2f}'.format(convertible).lower()
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
# Workaround for Windows NaN tests due to Visual C runtime
# special floating point values (indefinite NaN)
for nan in (float('NaN'), np.nan, np.float32(np.nan), np.double(np.nan),
np.double(float('NaN'))):
actual = try_to_convert(nan)
self.assertIn('nan', actual, msg="Can't convert nan of type {} to float. "
"Actual: {}".format(type(nan).__name__, actual))
min_double, max_double = get_limits(ctypes.c_double)
for inf in (min_float * 10, max_float * 10, min_double, max_double):
expected = 'float: {}inf'.format('-' if inf < 0 else '')
actual = try_to_convert(inf)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(inf, expected, actual))
def test_parse_to_float_not_convertible(self):
for not_convertible in ('s', 'str', (12,), [1, 2], np.array([1, 2], dtype=float),
np.array([1, 2], dtype=np.double), complex(1, 1), complex(imag=2),
complex(1.1)):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpFloat(not_convertible)
def test_parse_to_float_not_convertible_extra(self):
for not_convertible in (np.bool_(False), True, False, np.array([123, ], dtype=int),
np.array([1., ]), np.array([False]),
np.array([True])):
with self.assertRaises((TypeError, OverflowError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpFloat(not_convertible)
def test_parse_to_double_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpDouble)
min_float, max_float = get_limits(ctypes.c_float)
min_double, max_double = get_limits(ctypes.c_double)
for convertible in (2, -13, 1.24, np.float32(32.45), float(2), np.double(12.23),
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np.float32(-12.3), np.float64(3.22), min_float,
max_float, min_double, max_double, np.inf, -np.inf, float('Inf'),
-float('Inf'), np.double(np.inf), np.double(-np.inf),
np.double(float('Inf')), np.double(-float('Inf'))):
expected = 'Double: {0:.2f}'.format(convertible).lower()
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
# Workaround for Windows NaN tests due to Visual C runtime
# special floating point values (indefinite NaN)
for nan in (float('NaN'), np.nan, np.double(np.nan),
np.double(float('NaN'))):
actual = try_to_convert(nan)
self.assertIn('nan', actual, msg="Can't convert nan of type {} to double. "
"Actual: {}".format(type(nan).__name__, actual))
def test_parse_to_double_not_convertible(self):
for not_convertible in ('s', 'str', (12,), [1, 2], np.array([1, 2], dtype=np.float32),
np.array([1, 2], dtype=np.double), complex(1, 1), complex(imag=2),
complex(1.1)):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpDouble(not_convertible)
def test_parse_to_double_not_convertible_extra(self):
for not_convertible in (np.bool_(False), True, False, np.array([123, ], dtype=int),
np.array([1., ]), np.array([False]),
np.array([12.4], dtype=np.double), np.array([True])):
with self.assertRaises((TypeError, OverflowError),
msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpDouble(not_convertible)
def test_parse_to_cstring_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpCString)
for convertible in ('', 's', 'str', str(123), ('char'), np.str_('test2')):
expected = 'string: ' + convertible
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_cstring_not_convertible(self):
for not_convertible in ((12,), ('t', 'e', 's', 't'), np.array(['123', ]),
np.array(['t', 'e', 's', 't']), 1, -1.4, True, False, None):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpCString(not_convertible)
def test_parse_to_string_convertible(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpString)
for convertible in (None, '', 's', 'str', str(123), np.str_('test2')):
expected = 'string: ' + (convertible if convertible else '')
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_string_not_convertible(self):
for not_convertible in ((12,), ('t', 'e', 's', 't'), np.array(['123', ]),
np.array(['t', 'e', 's', 't']), 1, True, False):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpString(not_convertible)
def test_parse_to_rect_convertible(self):
Rect = namedtuple('Rect', ('x', 'y', 'w', 'h'))
try_to_convert = partial(self._try_to_convert, cv.utils.dumpRect)
for convertible in ((1, 2, 4, 5), [5, 3, 10, 20], np.array([10, 20, 23, 10]),
Rect(10, 30, 40, 55), tuple(np.array([40, 20, 24, 20])),
list(np.array([20, 40, 30, 35]))):
expected = 'rect: (x={}, y={}, w={}, h={})'.format(*convertible)
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_rect_not_convertible(self):
for not_convertible in (np.empty(shape=(4, 1)), (), [], np.array([]), (12, ),
[3, 4, 5, 10, 123], {1: 2, 3:4, 5:10, 6:30},
'1234', np.array([1, 2, 3, 4], dtype=np.float32),
np.array([[1, 2], [3, 4], [5, 6], [6, 8]]), (1, 2, 5, 1.5)):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpRect(not_convertible)
def test_parse_to_rotated_rect_convertible(self):
RotatedRect = namedtuple('RotatedRect', ('center', 'size', 'angle'))
try_to_convert = partial(self._try_to_convert, cv.utils.dumpRotatedRect)
for convertible in (((2.5, 2.5), (10., 20.), 12.5), [[1.5, 10.5], (12.5, 51.5), 10],
RotatedRect((10, 40), np.array([10.5, 20.5]), 5),
np.array([[10, 6], [50, 50], 5.5], dtype=object)):
center, size, angle = convertible
expected = 'rotated_rect: (c_x={:.6f}, c_y={:.6f}, w={:.6f},' \
' h={:.6f}, a={:.6f})'.format(center[0], center[1],
size[0], size[1], angle)
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_wrap_rotated_rect(self):
center = (34.5, 52.)
size = (565.0, 140.0)
angle = -177.5
rect1 = cv.RotatedRect(center, size, angle)
self.assertEqual(rect1.center, center)
self.assertEqual(rect1.size, size)
self.assertEqual(rect1.angle, angle)
pts = [[ 319.7845, -5.6109037],
[ 313.6778, 134.25586],
[-250.78448, 109.6109],
[-244.6778, -30.25586]]
self.assertLess(np.max(np.abs(rect1.points() - pts)), 1e-4)
rect2 = cv.RotatedRect(pts[0], pts[1], pts[2])
_, inter_pts = cv.rotatedRectangleIntersection(rect1, rect2)
self.assertLess(np.max(np.abs(inter_pts.reshape(-1, 2) - pts)), 1e-4)
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def test_result_rotated_rect_boundingRect2f(self):
center = (0, 0)
size = (10, 10)
angle = 0
gold_box = (-5.0, -5.0, 10.0, 10.0)
rect1 = cv.RotatedRect(center, size, angle)
bbox = rect1.boundingRect2f()
self.assertEqual(gold_box, bbox)
def test_parse_to_rotated_rect_not_convertible(self):
for not_convertible in ([], (), np.array([]), (123, (45, 34), 1), {1: 2, 3: 4}, 123,
np.array([[123, 123, 14], [1, 3], 56], dtype=object), '123'):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpRotatedRect(not_convertible)
def test_parse_to_term_criteria_convertible(self):
TermCriteria = namedtuple('TermCriteria', ('type', 'max_count', 'epsilon'))
try_to_convert = partial(self._try_to_convert, cv.utils.dumpTermCriteria)
for convertible in ((1, 10, 1e-3), [2, 30, 1e-1], np.array([10, 20, 0.5], dtype=object),
TermCriteria(0, 5, 0.1)):
expected = 'term_criteria: (type={}, max_count={}, epsilon={:.6f}'.format(*convertible)
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_term_criteria_not_convertible(self):
for not_convertible in ([], (), np.array([]), [1, 4], (10,), (1.5, 34, 0.1),
{1: 5, 3: 5, 10: 10}, '145'):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpTermCriteria(not_convertible)
def test_parse_to_range_convertible_to_all(self):
try_to_convert = partial(self._try_to_convert, cv.utils.dumpRange)
for convertible in ((), [], np.array([])):
expected = 'range: all'
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_range_convertible(self):
Range = namedtuple('Range', ('start', 'end'))
try_to_convert = partial(self._try_to_convert, cv.utils.dumpRange)
for convertible in ((10, 20), [-1, 3], np.array([10, 24]), Range(-4, 6)):
expected = 'range: (s={}, e={})'.format(*convertible)
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_to_range_not_convertible(self):
for not_convertible in ((1, ), [40, ], np.array([1, 4, 6]), {'a': 1, 'b': 40},
(1.5, 13.5), [3, 6.7], np.array([6.3, 2.1]), '14, 4'):
with self.assertRaises((TypeError), msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpRange(not_convertible)
def test_reserved_keywords_are_transformed(self):
default_lambda_value = 2
default_from_value = 3
format_str = "arg={}, lambda={}, from={}"
self.assertEqual(
cv.utils.testReservedKeywordConversion(20), format_str.format(20, default_lambda_value, default_from_value)
)
self.assertEqual(
cv.utils.testReservedKeywordConversion(10, lambda_=10), format_str.format(10, 10, default_from_value)
)
self.assertEqual(
cv.utils.testReservedKeywordConversion(10, from_=10), format_str.format(10, default_lambda_value, 10)
)
self.assertEqual(
cv.utils.testReservedKeywordConversion(20, lambda_=-4, from_=12), format_str.format(20, -4, 12)
)
def test_parse_vector_int_convertible(self):
np.random.seed(123098765)
try_to_convert = partial(self._try_to_convert, cv.utils.dumpVectorOfInt)
arr = np.random.randint(-20, 20, 40).astype(np.int32).reshape(10, 2, 2)
int_min, int_max = get_limits(ctypes.c_int)
for convertible in ((int_min, 1, 2, 3, int_max), [40, 50], tuple(),
np.array([int_min, -10, 24, int_max], dtype=np.int32),
np.array([10, 230, 12], dtype=np.uint8), arr[:, 0, 1],):
expected = "[" + ", ".join(map(str, convertible)) + "]"
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_vector_int_not_convertible(self):
np.random.seed(123098765)
arr = np.random.randint(-20, 20, 40).astype(np.float32).reshape(10, 2, 2)
int_min, int_max = get_limits(ctypes.c_int)
test_dict = {1: 2, 3: 10, 10: 20}
for not_convertible in ((int_min, 1, 2.5, 3, int_max), [True, 50], 'test', test_dict,
reversed([1, 2, 3]),
np.array([int_min, -10, 24, [1, 2]], dtype=object),
np.array([[1, 2], [3, 4]]), arr[:, 0, 1],):
with self.assertRaises(TypeError, msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpVectorOfInt(not_convertible)
def test_parse_vector_double_convertible(self):
np.random.seed(1230965)
try_to_convert = partial(self._try_to_convert, cv.utils.dumpVectorOfDouble)
arr = np.random.randint(-20, 20, 40).astype(np.int32).reshape(10, 2, 2)
for convertible in ((1, 2.12, 3.5), [40, 50], tuple(),
np.array([-10, 24], dtype=np.int32),
np.array([-12.5, 1.4], dtype=np.double),
np.array([10, 230, 12], dtype=np.float32), arr[:, 0, 1], ):
expected = "[" + ", ".join(map(lambda v: "{:.2f}".format(v), convertible)) + "]"
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_vector_double_not_convertible(self):
test_dict = {1: 2, 3: 10, 10: 20}
for not_convertible in (('t', 'e', 's', 't'), [True, 50.55], 'test', test_dict,
np.array([-10.1, 24.5, [1, 2]], dtype=object),
np.array([[1, 2], [3, 4]]),):
with self.assertRaises(TypeError, msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpVectorOfDouble(not_convertible)
def test_parse_vector_rect_convertible(self):
np.random.seed(1238765)
try_to_convert = partial(self._try_to_convert, cv.utils.dumpVectorOfRect)
arr_of_rect_int32 = np.random.randint(5, 20, 4 * 3).astype(np.int32).reshape(3, 4)
arr_of_rect_cast = np.random.randint(10, 40, 4 * 5).astype(np.uint8).reshape(5, 4)
for convertible in (((1, 2, 3, 4), (10, -20, 30, 10)), arr_of_rect_int32, arr_of_rect_cast,
arr_of_rect_int32.astype(np.int8), [[5, 3, 1, 4]],
((np.int8(4), np.uint8(10), int(32), np.int16(55)),)):
expected = "[" + ", ".join(map(lambda v: "[x={}, y={}, w={}, h={}]".format(*v), convertible)) + "]"
actual = try_to_convert(convertible)
self.assertEqual(expected, actual,
msg=get_conversion_error_msg(convertible, expected, actual))
def test_parse_vector_rect_not_convertible(self):
np.random.seed(1238765)
arr = np.random.randint(5, 20, 4 * 3).astype(np.float32).reshape(3, 4)
for not_convertible in (((1, 2, 3, 4), (10.5, -20, 30.1, 10)), arr,
[[5, 3, 1, 4], []],
((float(4), np.uint8(10), int(32), np.int16(55)),)):
with self.assertRaises(TypeError, msg=get_no_exception_msg(not_convertible)):
_ = cv.utils.dumpVectorOfRect(not_convertible)
def test_vector_general_return(self):
expected_number_of_mats = 5
expected_shape = (10, 10, 3)
expected_type = np.uint8
mats = cv.utils.generateVectorOfMat(5, 10, 10, cv.CV_8UC3)
self.assertTrue(isinstance(mats, tuple),
"Vector of Mats objects should be returned as tuple. Got: {}".format(type(mats)))
self.assertEqual(len(mats), expected_number_of_mats, "Returned array has wrong length")
for mat in mats:
self.assertEqual(mat.shape, expected_shape, "Returned Mat has wrong shape")
self.assertEqual(mat.dtype, expected_type, "Returned Mat has wrong elements type")
empty_mats = cv.utils.generateVectorOfMat(0, 10, 10, cv.CV_32FC1)
self.assertTrue(isinstance(empty_mats, tuple),
"Empty vector should be returned as empty tuple. Got: {}".format(type(mats)))
self.assertEqual(len(empty_mats), 0, "Vector of size 0 should be returned as tuple of length 0")
def test_vector_fast_return(self):
expected_shape = (5, 4)
rects = cv.utils.generateVectorOfRect(expected_shape[0])
self.assertTrue(isinstance(rects, np.ndarray),
"Vector of rectangles should be returned as numpy array. Got: {}".format(type(rects)))
self.assertEqual(rects.dtype, np.int32, "Vector of rectangles has wrong elements type")
self.assertEqual(rects.shape, expected_shape, "Vector of rectangles has wrong shape")
empty_rects = cv.utils.generateVectorOfRect(0)
self.assertTrue(isinstance(empty_rects, tuple),
"Empty vector should be returned as empty tuple. Got: {}".format(type(empty_rects)))
self.assertEqual(len(empty_rects), 0, "Vector of size 0 should be returned as tuple of length 0")
expected_shape = (10,)
ints = cv.utils.generateVectorOfInt(expected_shape[0])
self.assertTrue(isinstance(ints, np.ndarray),
"Vector of integers should be returned as numpy array. Got: {}".format(type(ints)))
self.assertEqual(ints.dtype, np.int32, "Vector of integers has wrong elements type")
self.assertEqual(ints.shape, expected_shape, "Vector of integers has wrong shape.")
def test_result_rotated_rect_issue_20930(self):
rr = cv.utils.testRotatedRect(10, 20, 100, 200, 45)
self.assertTrue(isinstance(rr, tuple), msg=type(rr))
self.assertEqual(len(rr), 3)
rrv = cv.utils.testRotatedRectVector(10, 20, 100, 200, 45)
self.assertTrue(isinstance(rrv, tuple), msg=type(rrv))
self.assertEqual(len(rrv), 10)
rr = rrv[0]
self.assertTrue(isinstance(rr, tuple), msg=type(rrv))
self.assertEqual(len(rr), 3)
def test_nested_function_availability(self):
self.assertTrue(hasattr(cv.utils, "nested"),
msg="Module is not generated for nested namespace")
self.assertTrue(hasattr(cv.utils.nested, "testEchoBooleanFunction"),
msg="Function in nested module is not available")
if sys.version_info[0] < 3:
# Nested submodule is managed only by the global submodules dictionary
# and parent native module
expected_ref_count = 2
else:
# Nested submodule is managed by the global submodules dictionary,
# parent native module and Python part of the submodule
expected_ref_count = 3
# `getrefcount` temporary increases reference counter by 1
actual_ref_count = sys.getrefcount(cv.utils.nested) - 1
self.assertEqual(actual_ref_count, expected_ref_count,
msg="Nested submodule reference counter has wrong value\n"
"Expected: {}. Actual: {}".format(expected_ref_count, actual_ref_count))
for flag in (True, False):
self.assertEqual(flag, cv.utils.nested.testEchoBooleanFunction(flag),
msg="Function in nested module returns wrong result")
def test_class_from_submodule_has_global_alias(self):
self.assertTrue(hasattr(cv.ml, "Boost"),
msg="Class is not registered in the submodule")
self.assertTrue(hasattr(cv, "ml_Boost"),
msg="Class from submodule doesn't have alias in the "
"global module")
self.assertEqual(cv.ml.Boost, cv.ml_Boost,
msg="Classes from submodules and global module don't refer "
"to the same type")
def test_inner_class_has_global_alias(self):
self.assertTrue(hasattr(cv.SimpleBlobDetector, "Params"),
msg="Class is not registered as inner class")
self.assertTrue(hasattr(cv, "SimpleBlobDetector_Params"),
msg="Inner class doesn't have alias in the global module")
self.assertEqual(cv.SimpleBlobDetector.Params, cv.SimpleBlobDetector_Params,
msg="Inner class and class in global module don't refer "
"to the same type")
def test_export_class_with_different_name(self):
self.assertTrue(hasattr(cv.utils.nested, "ExportClassName"),
msg="Class with export alias is not registered in the submodule")
self.assertTrue(hasattr(cv, "utils_nested_ExportClassName"),
msg="Class with export alias doesn't have alias in the "
"global module")
self.assertEqual(cv.utils.nested.ExportClassName.originalName(), "OriginalClassName")
instance = cv.utils.nested.ExportClassName.create()
self.assertTrue(isinstance(instance, cv.utils.nested.ExportClassName),
msg="Factory function returns wrong class instance: {}".format(type(instance)))
self.assertTrue(hasattr(cv.utils.nested, "ExportClassName_create"),
msg="Factory function should have alias in the same module as the class")
# self.assertFalse(hasattr(cv.utils.nested, "OriginalClassName_create"),
# msg="Factory function should not be registered with original class name, "\
# "when class has different export name")
def test_export_inner_class_of_class_exported_with_different_name(self):
if not hasattr(cv.utils.nested, "ExportClassName"):
raise unittest.SkipTest(
"Outer class with export alias is not registered in the submodule")
self.assertTrue(hasattr(cv.utils.nested.ExportClassName, "Params"),
msg="Inner class with export alias is not registered in "
"the outer class")
self.assertTrue(hasattr(cv, "utils_nested_ExportClassName_Params"),
msg="Inner class with export alias is not registered in "
"global module")
params = cv.utils.nested.ExportClassName.Params()
params.int_value = 45
params.float_value = 4.5
instance = cv.utils.nested.ExportClassName.create(params)
self.assertTrue(isinstance(instance, cv.utils.nested.ExportClassName),
msg="Factory function returns wrong class instance: {}".format(type(instance)))
self.assertEqual(
params.int_value, instance.getIntParam(),
msg="Class initialized with wrong integer parameter. Expected: {}. Actual: {}".format(
params.int_value, instance.getIntParam()
)
)
self.assertEqual(
params.float_value, instance.getFloatParam(),
msg="Class initialized with wrong integer parameter. Expected: {}. Actual: {}".format(
params.float_value, instance.getFloatParam()
)
)
def test_named_arguments_without_parameters(self):
src = np.ones((5, 5, 3), dtype=np.uint8)
arguments_dump, src_copy = cv.utils.copyMatAndDumpNamedArguments(src)
np.testing.assert_equal(src, src_copy)
self.assertEqual(arguments_dump, 'lambda=-1, sigma=0.0')
def test_named_arguments_without_output_argument(self):
src = np.zeros((2, 2, 3), dtype=np.uint8)
arguments_dump, src_copy = cv.utils.copyMatAndDumpNamedArguments(
src, lambda_=15, sigma=3.5
)
np.testing.assert_equal(src, src_copy)
self.assertEqual(arguments_dump, 'lambda=15, sigma=3.5')
def test_named_arguments_with_output_argument(self):
src = np.zeros((3, 3, 3), dtype=np.uint8)
dst = np.ones_like(src)
arguments_dump, src_copy = cv.utils.copyMatAndDumpNamedArguments(
src, dst, lambda_=25, sigma=5.5
)
np.testing.assert_equal(src, src_copy)
np.testing.assert_equal(dst, src_copy)
self.assertEqual(arguments_dump, 'lambda=25, sigma=5.5')
def test_arithm_op_without_saturation(self):
np.random.seed(4231568)
src = np.random.randint(20, 40, 8 * 4 * 3).astype(np.uint8).reshape(8, 4, 3)
operations = get_ocv_arithm_op_table(apply_saturation=False)
for ocv_op, numpy_op in operations.items():
for val in (2, 4, (5, ), (6, 4), (2., 4., 1.),
np.uint8([1, 2, 2]), np.float64([5, 2, 6, 3]),):
dst = ocv_op(src, val)
expected = numpy_op(src, val)
# Temporarily allows a difference of 1 for arm64 workaround.
self.assertLess(np.max(np.abs(dst - expected)), 2,
msg="Operation '{}' is failed for {}".format(ocv_op.__name__, val ) )
def test_arithm_op_with_saturation(self):
np.random.seed(4231568)
src = np.random.randint(20, 40, 4 * 8 * 4).astype(np.uint8).reshape(4, 8, 4)
operations = get_ocv_arithm_op_table(apply_saturation=True)
for ocv_op, numpy_op in operations.items():
for val in (10, 4, (40, ), (15, 12), (25., 41., 15.),
np.uint8([1, 2, 20]), np.float64([50, 21, 64, 30]),):
dst = ocv_op(src, val)
expected = numpy_op(src, val)
# Temporarily allows a difference of 1 for arm64 workaround.
self.assertLess(np.max(np.abs(dst - expected)), 2,
msg="Saturated Operation '{}' is failed for {}".format(ocv_op.__name__, val ) )
class CanUsePurePythonModuleFunction(NewOpenCVTests):
def test_can_get_ocv_version(self):
import sys
if sys.version_info[0] < 3:
raise unittest.SkipTest('Python 2.x is not supported')
self.assertEqual(cv.misc.get_ocv_version(), cv.__version__,
"Can't get package version using Python misc module")
def test_native_method_can_be_patched(self):
import sys
if sys.version_info[0] < 3:
raise unittest.SkipTest('Python 2.x is not supported')
res = cv.utils.testOverwriteNativeMethod(10)
self.assertTrue(isinstance(res, Sequence),
msg="Overwritten method should return sequence. "
"Got: {} of type {}".format(res, type(res)))
self.assertSequenceEqual(res, (11, 10),
msg="Failed to overwrite native method")
res = cv.utils._native.testOverwriteNativeMethod(123)
self.assertEqual(res, 123, msg="Failed to call native method implementation")
def test_default_matx_argument(self):
res = cv.utils.dumpVec2i()
self.assertEqual(res, "Vec2i(42, 24)",
msg="Default argument is not properly handled")
res = cv.utils.dumpVec2i((12, 21))
self.assertEqual(res, "Vec2i(12, 21)")
class SamplesFindFile(NewOpenCVTests):
def test_ExistedFile(self):
res = cv.samples.findFile('lena.jpg', False)
self.assertNotEqual(res, '')
def test_MissingFile(self):
res = cv.samples.findFile('non_existed.file', False)
self.assertEqual(res, '')
def test_MissingFileException(self):
try:
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_res = cv.samples.findFile('non_existed.file', True)
self.assertEqual("Dead code", 0)
except cv.error as _e:
pass
if __name__ == '__main__':
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NewOpenCVTests.bootstrap()