def test_on_the_fly_feature_extraction_unsupervised_dataset_with_augmentation(libri_cut_set): tested_dataset = DynamicUnsupervisedDataset( feature_extractor=Fbank(), cuts=libri_cut_set, augmenter=WavAugmenter.create_predefined('reverb', sampling_rate=16000) ) # Just test that it runs tested_feats = tested_dataset[0]
def test_feature_set_builder_with_augmentation(): recordings: RecordingSet = RecordingSet.from_json( 'test/fixtures/audio.json') augment_fn = WavAugmenter.create_predefined('pitch_reverb_tdrop', sampling_rate=8000) extractor = Fbank() with TemporaryDirectory() as d, LilcomFilesWriter(d) as storage: builder = FeatureSetBuilder(feature_extractor=extractor, storage=storage, augment_fn=augment_fn) feature_set = builder.process_and_store_recordings( recordings=recordings) assert len(feature_set) == 6 feature_infos = list(feature_set) # Assert the properties shared by all features for features in feature_infos: # assert that fbank is the default feature type assert features.type == 'fbank' # assert that duration is always a multiple of frame_shift assert features.num_frames == round(features.duration / features.frame_shift) # assert that num_features is preserved assert features.num_features == builder.feature_extractor.config.num_mel_bins # assert that the storage type metadata matches assert features.storage_type == storage.name # assert that the metadata is consistent with the data shapes arr = features.load() assert arr.shape[0] == features.num_frames assert arr.shape[1] == features.num_features # Assert the properties for recordings of duration 0.5 seconds for features in feature_infos[:2]: assert features.num_frames == 50 assert features.duration == 0.5 # Assert the properties for recordings of duration 1.0 seconds for features in feature_infos[2:]: assert features.num_frames == 100 assert features.duration == 1.0
def extract(audio_manifest: Pathlike, output_dir: Pathlike, segmentation_manifest: Optional[Pathlike], augmentation: str, feature_manifest: Optional[Pathlike], compressed: bool, lilcom_tick_power: int, root_dir: Optional[Pathlike], num_jobs: int): """ Extract features for recordings in a given AUDIO_MANIFEST. The features are stored in OUTPUT_DIR, with one file per recording (or segment). """ audio_set = RecordingSet.from_json(audio_manifest) feature_extractor = (FeatureExtractor.from_yaml(feature_manifest) if feature_manifest is not None else Fbank()) # TODO: to be used (actually, only the segmentation info will be used, and all supervision info will be ignored) supervision_set = (SupervisionSet.from_json(segmentation_manifest) if segmentation_manifest is not None else None) output_dir = Path(output_dir) output_dir.mkdir(exist_ok=True, parents=True) augmenter = None if augmentation is not None: sampling_rate = next(iter(audio_set)).sampling_rate assert all(rec.sampling_rate == sampling_rate for rec in audio_set), \ "Wav augmentation effect chains expect all the recordings to have the same sampling rate at this time." augmenter = WavAugmenter.create_predefined(name=augmentation, sampling_rate=sampling_rate) feature_set_builder = FeatureSetBuilder( feature_extractor=feature_extractor, output_dir=output_dir, root_dir=root_dir, augmenter=augmenter) feature_set_builder.process_and_store_recordings( recordings=audio_set, segmentation=None, # TODO: implement and use compressed=compressed, lilcom_tick_power=lilcom_tick_power, num_jobs=num_jobs)
def extract(recording_manifest: Pathlike, output_dir: Pathlike, augmentation: str, feature_manifest: Optional[Pathlike], storage_type: str, lilcom_tick_power: int, root_dir: Optional[Pathlike], num_jobs: int): """ Extract features for recordings in a given AUDIO_MANIFEST. The features are stored in OUTPUT_DIR, with one file per recording (or segment). """ recordings: RecordingSet = RecordingSet.from_json(recording_manifest) if root_dir is not None: recordings = recordings.with_path_prefix(root_dir) feature_extractor = (FeatureExtractor.from_yaml(feature_manifest) if feature_manifest is not None else Fbank()) output_dir = Path(output_dir) output_dir.mkdir(exist_ok=True, parents=True) storage_path = output_dir / 'feats.h5' if 'hdf5' in storage_type else output_dir / 'storage' augmenter = None if augmentation is not None: sampling_rate = next(iter(recordings)).sampling_rate assert all(rec.sampling_rate == sampling_rate for rec in recordings), \ "Wav augmentation effect chains expect all the recordings to have the same sampling rate at this time." augmenter = WavAugmenter.create_predefined(name=augmentation, sampling_rate=sampling_rate) with get_writer(storage_type)(storage_path, tick_power=lilcom_tick_power) as storage: feature_set_builder = FeatureSetBuilder( feature_extractor=feature_extractor, storage=storage, augmenter=augmenter) feature_set_builder.process_and_store_recordings( recordings=recordings, output_manifest=output_dir / 'feature_manifest.json.gz', num_jobs=num_jobs)
def test_feature_set_builder(augmentation): audio_set = RecordingSet.from_json('test/fixtures/audio.json') augmenter = WavAugmenter.create_predefined( augmentation, sampling_rate=8000) if augmentation is not None else None with TemporaryDirectory() as output_dir: builder = FeatureSetBuilder(feature_extractor=Fbank(), output_dir=output_dir, augmenter=augmenter) feature_set = builder.process_and_store_recordings( recordings=audio_set) assert len(feature_set) == 6 feature_infos = list(feature_set) # Assert the properties shared by all features for features in feature_infos: # assert that fbank is the default feature type assert features.type == 'fbank' # assert that duration is always a multiple of frame_shift assert features.num_frames == round(features.duration / features.frame_shift) # assert that num_features is preserved assert features.num_features == builder.feature_extractor.config.num_mel_bins # assert that lilcom is the default storate type assert features.storage_type == 'lilcom' # Assert the properties for recordings of duration 0.5 seconds for features in feature_infos[:2]: assert features.num_frames == 50 assert features.duration == 0.5 # Assert the properties for recordings of duration 1.0 seconds for features in feature_infos[2:]: assert features.num_frames == 100 assert features.duration == 1.0
def test_predefined_augmentation_setups(audio, name): augmenter = WavAugmenter.create_predefined(name=name, sampling_rate=16000) augmented_audio = augmenter(audio, sampling_rate=16000) assert augmented_audio.shape == audio.shape assert (augmented_audio != audio).any()