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207 lines
5.2 KiB
Python
Executable File
207 lines
5.2 KiB
Python
Executable File
#!/usr/bin/env python
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"""Algorithm serialization test."""
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from __future__ import print_function
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import base64
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import json
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import tempfile
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import os
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import cv2 as cv
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import numpy as np
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from tests_common import NewOpenCVTests
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class MyData:
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def __init__(self):
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self.A = 97
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self.X = np.pi
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self.name = 'mydata1234'
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def write(self, fs, name):
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fs.startWriteStruct(name, cv.FileNode_MAP|cv.FileNode_FLOW)
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fs.write('A', self.A)
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fs.write('X', self.X)
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fs.write('name', self.name)
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fs.endWriteStruct()
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def read(self, node):
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if (not node.empty()):
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self.A = int(node.getNode('A').real())
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self.X = node.getNode('X').real()
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self.name = node.getNode('name').string()
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else:
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self.A = self.X = 0
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self.name = ''
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class filestorage_io_test(NewOpenCVTests):
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strings_data = ['image1.jpg', 'Awesomeness', '../data/baboon.jpg']
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R0 = np.eye(3,3)
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T0 = np.zeros((3,1))
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def write_data(self, fname):
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fs = cv.FileStorage(fname, cv.FileStorage_WRITE)
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R = self.R0
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T = self.T0
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m = MyData()
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fs.write('iterationNr', 100)
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fs.startWriteStruct('strings', cv.FileNode_SEQ)
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for elem in self.strings_data:
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fs.write('', elem)
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fs.endWriteStruct()
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fs.startWriteStruct('Mapping', cv.FileNode_MAP)
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fs.write('One', 1)
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fs.write('Two', 2)
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fs.endWriteStruct()
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fs.write('R_MAT', R)
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fs.write('T_MAT', T)
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m.write(fs, 'MyData')
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fs.release()
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def read_data_and_check(self, fname):
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fs = cv.FileStorage(fname, cv.FileStorage_READ)
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n = fs.getNode('iterationNr')
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itNr = int(n.real())
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self.assertEqual(itNr, 100)
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n = fs.getNode('strings')
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self.assertTrue(n.isSeq())
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self.assertEqual(n.size(), len(self.strings_data))
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for i in range(n.size()):
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self.assertEqual(n.at(i).string(), self.strings_data[i])
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n = fs.getNode('Mapping')
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self.assertEqual(int(n.getNode('Two').real()), 2)
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self.assertEqual(int(n.getNode('One').real()), 1)
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R = fs.getNode('R_MAT').mat()
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T = fs.getNode('T_MAT').mat()
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self.assertEqual(cv.norm(R, self.R0, cv.NORM_INF), 0)
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self.assertEqual(cv.norm(T, self.T0, cv.NORM_INF), 0)
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m0 = MyData()
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m = MyData()
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m.read(fs.getNode('MyData'))
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self.assertEqual(m.A, m0.A)
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self.assertEqual(m.X, m0.X)
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self.assertEqual(m.name, m0.name)
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n = fs.getNode('NonExisting')
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self.assertTrue(n.isNone())
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fs.release()
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def run_fs_test(self, ext):
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fd, fname = tempfile.mkstemp(prefix="opencv_python_sample_filestorage", suffix=ext)
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os.close(fd)
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self.write_data(fname)
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self.read_data_and_check(fname)
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os.remove(fname)
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def test_xml(self):
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self.run_fs_test(".xml")
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def test_yml(self):
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self.run_fs_test(".yml")
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def test_json(self):
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self.run_fs_test(".json")
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def test_base64(self):
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fd, fname = tempfile.mkstemp(prefix="opencv_python_sample_filestorage_base64", suffix=".json")
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os.close(fd)
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np.random.seed(42)
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self.write_base64_json(fname)
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os.remove(fname)
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@staticmethod
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def get_normal_2d_mat():
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rows = 10
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cols = 20
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cn = 3
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image = np.zeros((rows, cols, cn), np.uint8)
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image[:] = (1, 2, 127)
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for i in range(rows):
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for j in range(cols):
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image[i, j, 1] = (i + j) % 256
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return image
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@staticmethod
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def get_normal_nd_mat():
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shape = (2, 2, 1, 2)
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cn = 4
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image = np.zeros(shape + (cn,), np.float64)
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image[:] = (0.888, 0.111, 0.666, 0.444)
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return image
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@staticmethod
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def get_empty_2d_mat():
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shape = (0, 0)
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cn = 1
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image = np.zeros(shape + (cn,), np.uint8)
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return image
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@staticmethod
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def get_random_mat():
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rows = 8
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cols = 16
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cn = 1
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image = np.random.rand(rows, cols, cn)
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return image
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@staticmethod
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def decode(data):
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# strip $base64$
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encoded = data[8:]
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if len(encoded) == 0:
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return b''
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# strip info about datatype and padding
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return base64.b64decode(encoded)[24:]
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def write_base64_json(self, fname):
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fs = cv.FileStorage(fname, cv.FileStorage_WRITE_BASE64)
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mats = {'normal_2d_mat': self.get_normal_2d_mat(),
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'normal_nd_mat': self.get_normal_nd_mat(),
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'empty_2d_mat': self.get_empty_2d_mat(),
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'random_mat': self.get_random_mat()}
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for name, mat in mats.items():
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fs.write(name, mat)
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fs.release()
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data = {}
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with open(fname) as file:
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data = json.load(file)
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for name, mat in mats.items():
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buffer = b''
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if mat.size != 0:
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if hasattr(mat, 'tobytes'):
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buffer = mat.tobytes()
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else:
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buffer = mat.tostring()
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self.assertEqual(buffer, self.decode(data[name]['data']))
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if __name__ == '__main__':
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NewOpenCVTests.bootstrap()
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