"""test_feature_extractors_functional.py -- functional tests for feature extractors This module contains functional tests for FEs using crafted and/or generated media files to verify that the FEs are working as expected: - laughter detection -- uses videos with laughs at known times - video activity -- uses videos with visual activity at known times - audio loudness -- uses videos with audio at known times etc. These tests are marked slow to avoid running them during normal test runs. """ import unittest import pipeline.feature_extractors as extractors import test.mocks as mocks class FEFunctionalTest(unittest.TestCase): """FEFunctionalTest -- base class for functional tests for feature extractors """ SAMPLE_DIR = "/home/robert/code/softdev2023-24/summerproject/highlights/test/sample_videos" class TestVideoActivityFEFunctional(FEFunctionalTest): """TestVisualActivityFEFunctional -- functional tests for visual activity feature extractor """ def test_visual_activity_functional(self): """Test visual activity feature extractor use: - sample_videos/sample-manual-visualactivity.mp4 :: activity at 15-20s -- pass if activity detected anywhere in this range """ SAMPLE_VIDEO = f"{self.SAMPLE_DIR}/sample-manual-visualactivity.mp4" START_TIME = 15 END_TIME = 20 # create mock source with the video source = mocks.MockSource(path=SAMPLE_VIDEO) # create the feature extractor testfe = extractors.VideoActivityFeatureExtractor(input_files=[source]) testfe.setup() testfe.run() testfe.teardown() # check if the feature was extracted: self.assertTrue(testfe.features) # check if the feature interval is within the expected range self.assertTrue(testfe.features[0].interval.start >= START_TIME) class TestLoudAudioFEFunctional(FEFunctionalTest): """TestAudioLoudnessFEFunctional -- functional tests for audio loudness feature extractor """ def test_audio_loudness_functional_one_feature(self): """Test audio loudness feature extractor use: - sample_videos/sample-manual-audio.mp4 :: audio at 15-20s -- pass if audio detected anywhere in this range -- peak at 16s - 18s, verify this is highest scoring """ SAMPLE_VIDEO = f"{self.SAMPLE_DIR}/sample-manual-audio.mp4" START_TIME = 15 END_TIME = 20 PEAK_START = 16 PEAK_END = 18 # create mock source with the video source = mocks.MockSource(path=SAMPLE_VIDEO) # create the feature extractor testfe = extractors.LoudAudioFeatureExtractor(input_files=[source]) testfe.setup() testfe.run() testfe.teardown() # check if the feature was extracted: self.assertTrue(testfe.features) # check if the feature interval is within the expected range self.assertTrue(testfe.features[0].interval.start >= START_TIME) # get sorted list of features based on feature.score sorted_features = sorted(testfe.features, key=lambda x: x.score, reverse=True) # check if the highest scoring feature is within the peak range self.assertTrue(sorted_features[0].interval.start >= PEAK_START) def test_audio_loudness_functional_no_features(self): """Test audio loudness feature extractor using a silent video. This should produce no features since "-inf" results from pyloudnorm are filtered out by the FE. Use: - sample_videos/sample-manual-audio-blank-video-colours.mp4 :: silent video (30s) -- pass if no features extracted """ SAMPLE_VIDEO = f"{self.SAMPLE_DIR}/sample-manual-audio-blank-video-colours.mp4" # create mock source with the video source = mocks.MockSource(path=SAMPLE_VIDEO) # create the feature extractor testfe = extractors.LoudAudioFeatureExtractor(input_files=[source]) testfe.setup() testfe.run() testfe.teardown() # check if the feature was extracted: self.assertFalse(testfe.features) if __name__ == "__main__": unittest.main()