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https://github.com/tesseract-ocr/tesseract.git
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f93fb9de74
The test currently has subtests which fail because of missing files. Signed-off-by: Stefan Weil <sw@weilnetz.de>
115 lines
4.9 KiB
C++
115 lines
4.9 KiB
C++
// (C) Copyright 2017, Google Inc.
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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// http://www.apache.org/licenses/LICENSE-2.0
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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#include <string> // for std::string
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#include "absl/strings/str_cat.h"
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#include "gmock/gmock.h" // for testing::ElementsAreArray
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#include "include_gunit.h"
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#include "lang_model_helpers.h"
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#include "log.h" // for LOG
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#include "lstmtrainer.h"
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#include "unicharset_training_utils.h"
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namespace tesseract {
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namespace {
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std::string TestDataNameToPath(const std::string& name) {
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return file::JoinPath(TESTING_DIR, name);
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}
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// This is an integration test that verifies that CombineLangModel works to
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// the extent that an LSTMTrainer can be initialized with the result, and it
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// can encode strings. More importantly, the test verifies that adding an extra
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// character to the unicharset does not change the encoding of strings.
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TEST(LangModelTest, AddACharacter) {
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constexpr char kTestString[] = "Simple ASCII string to encode !@#$%&";
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constexpr char kTestStringRupees[] = "ASCII string with Rupee symbol ₹";
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// Setup the arguments.
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std::string script_dir = LANGDATA_DIR;
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std::string eng_dir = file::JoinPath(script_dir, "eng");
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std::string unicharset_path = TestDataNameToPath("eng_beam.unicharset");
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UNICHARSET unicharset;
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EXPECT_TRUE(unicharset.load_from_file(unicharset_path.c_str()));
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std::string version_str = "TestVersion";
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std::string output_dir = FLAGS_test_tmpdir;
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LOG(INFO) << "Output dir=" << output_dir;
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std::string lang1 = "eng";
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bool pass_through_recoder = false;
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GenericVector<STRING> words, puncs, numbers;
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// If these reads fail, we get a warning message and an empty list of words.
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ReadFile(file::JoinPath(eng_dir, "eng.wordlist"), nullptr)
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.split('\n', &words);
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EXPECT_GT(words.size(), 0);
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ReadFile(file::JoinPath(eng_dir, "eng.punc"), nullptr).split('\n', &puncs);
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EXPECT_GT(puncs.size(), 0);
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ReadFile(file::JoinPath(eng_dir, "eng.numbers"), nullptr)
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.split('\n', &numbers);
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EXPECT_GT(numbers.size(), 0);
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bool lang_is_rtl = false;
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// Generate the traineddata file.
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EXPECT_EQ(0, CombineLangModel(unicharset, script_dir, version_str, output_dir,
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lang1, pass_through_recoder, words, puncs,
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numbers, lang_is_rtl, nullptr, nullptr));
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// Init a trainer with it, and encode a string.
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std::string traineddata1 =
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file::JoinPath(output_dir, lang1, absl::StrCat(lang1, ".traineddata"));
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LSTMTrainer trainer1;
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trainer1.InitCharSet(traineddata1);
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GenericVector<int> labels1;
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EXPECT_TRUE(trainer1.EncodeString(kTestString, &labels1));
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// Add a new character to the unicharset and try again.
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int size_before = unicharset.size();
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unicharset.unichar_insert("₹");
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SetupBasicProperties(/*report_errors*/ true, /*decompose (NFD)*/ false,
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&unicharset);
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EXPECT_EQ(size_before + 1, unicharset.size());
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// Generate the traineddata file.
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std::string lang2 = "extended";
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EXPECT_EQ(EXIT_SUCCESS,
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CombineLangModel(unicharset, script_dir, version_str, output_dir,
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lang2, pass_through_recoder, words, puncs, numbers,
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lang_is_rtl, nullptr, nullptr));
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// Init a trainer with it, and encode a string.
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std::string traineddata2 =
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file::JoinPath(output_dir, lang2, absl::StrCat(lang2, ".traineddata"));
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LSTMTrainer trainer2;
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trainer2.InitCharSet(traineddata2);
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GenericVector<int> labels2;
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EXPECT_TRUE(trainer2.EncodeString(kTestString, &labels2));
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// Copy labels1 to a std::vector, renumbering the null char to match trainer2.
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// Since Tensor Flow's CTC implementation insists on having the null be the
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// last label, and we want to be compatible, null has to be renumbered when
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// we add a class.
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int null1 = trainer1.null_char();
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int null2 = trainer2.null_char();
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EXPECT_EQ(null1 + 1, null2);
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std::vector<int> labels1_v(labels1.size());
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for (int i = 0; i < labels1.size(); ++i) {
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if (labels1[i] == null1)
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labels1_v[i] = null2;
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else
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labels1_v[i] = labels1[i];
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}
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EXPECT_THAT(labels1_v,
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testing::ElementsAreArray(&labels2[0], labels2.size()));
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// To make sure we we are not cheating somehow, we can now encode the Rupee
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// symbol, which we could not do before.
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EXPECT_FALSE(trainer1.EncodeString(kTestStringRupees, &labels1));
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EXPECT_TRUE(trainer2.EncodeString(kTestStringRupees, &labels2));
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}
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} // namespace
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} // namespace tesseract
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