def test_random_stretch_squeeze(self):
    test_utils.set_seed(self.seed)
    audio = np.zeros(self.input_shape)
    audio[:, 2:5,] = 1
    inputs = tf.keras.layers.Input(
        shape=self.input_shape[1:],
        batch_size=self.input_shape[0],
        dtype=tf.float32)
    outputs = random_stretch_squeeze.RandomStretchSqueeze(
        resample_offset=0.5,
        seed=self.seed)(
            inputs, training=True)
    model = tf.keras.models.Model(inputs, outputs)
    prediction = model.predict(audio)

    # confirm that data are squeezed
    target0 = np.array([0., 0., 1., 1., 0., 0., 0.])
    self.assertAllClose(prediction[0, :], target0)

    # confirm that data are stretched
    target1 = np.array([0., 0.44444, 1., 1., 1., 0.44444, 0.])
    self.assertAllClose(prediction[1, :], target1, atol=1e-4)
Exemplo n.º 2
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    def build(self, input_shape):
        super(SpeechFeatures, self).build(input_shape)

        if self.params[
                'sp_time_shift_samples'] != 0.0 and self.mode == modes.Modes.TRAINING:
            self.rand_shift = random_shift.RandomShift(
                self.params['sp_time_shift_samples'])
        else:
            self.rand_shift = tf.keras.layers.Lambda(lambda x: x)

        if self.params[
                'sp_resample'] != 0.0 and self.mode == modes.Modes.TRAINING:
            self.rand_stretch_squeeze = random_stretch_squeeze.RandomStretchSqueeze(
                self.params['sp_resample'])
        else:
            self.rand_stretch_squeeze = tf.keras.layers.Lambda(lambda x: x)

        self.data_frame = data_frame.DataFrame(
            mode=self.mode,
            inference_batch_size=self.inference_batch_size,
            frame_size=self.frame_size,
            frame_step=self.frame_step)

        if self.noise_scale != 0.0 and self.mode == modes.Modes.TRAINING:
            self.add_noise = tf.keras.layers.GaussianNoise(
                stddev=self.noise_scale)
        else:
            self.add_noise = tf.keras.layers.Lambda(lambda x: x)

        if self.params['preemph'] != 0.0:
            self.preemphasis = preemphasis.Preemphasis(
                preemph=self.params['preemph'])
        else:
            self.preemphasis = tf.keras.layers.Lambda(lambda x: x)

        if self.params['window_type'] is not None:
            self.windowing = windowing.Windowing(
                window_size=self.frame_size,
                window_type=self.params['window_type'])
        else:
            self.windowing = tf.keras.layers.Lambda(lambda x: x)

        # If use_tf_fft is False, we will use
        # Real Discrete Fourier Transformation(RDFT), which is slower than RFFT
        # To increase RDFT efficiency we use properties of mel spectrum.
        # We find a range of non zero values in mel spectrum
        # and use it to compute RDFT: it will speed up computations.
        # If use_tf_fft is True, then we use TF RFFT which require
        # signal length alignment, so we disable mel_non_zero_only.
        self.mag_rdft_mel = magnitude_rdft_mel.MagnitudeRDFTmel(
            use_tf_fft=self.params['use_tf_fft'],
            magnitude_squared=self.params['fft_magnitude_squared'],
            num_mel_bins=self.params['mel_num_bins'],
            lower_edge_hertz=self.params['mel_lower_edge_hertz'],
            upper_edge_hertz=self.params['mel_upper_edge_hertz'],
            sample_rate=self.params['sample_rate'],
            mel_non_zero_only=self.params['mel_non_zero_only'])

        self.log_max = tf.keras.layers.Lambda(lambda x: tf.math.log(
            tf.math.maximum(x, self.params['log_epsilon'])))

        if self.params['dct_num_features'] != 0:
            self.dct = dct.DCT(num_features=self.params['dct_num_features'])
        else:
            self.dct = tf.keras.layers.Lambda(lambda x: x)

        self.normalizer = normalizer.Normalizer(mean=self.mean,
                                                stddev=self.stddev)

        # in any inference mode there is no need to add dynamic logic in tf graph
        if self.params[
                'use_spec_augment'] and self.mode == modes.Modes.TRAINING:
            self.spec_augment = spectrogram_augment.SpecAugment(
                time_masks_number=self.params['time_masks_number'],
                time_mask_max_size=self.params['time_mask_max_size'],
                frequency_masks_number=self.params['frequency_masks_number'],
                frequency_mask_max_size=self.params['frequency_mask_max_size'])
        else:
            self.spec_augment = tf.keras.layers.Lambda(lambda x: x)

        if self.params['use_spec_cutout'] and self.mode == modes.Modes.TRAINING:
            self.spec_cutout = spectrogram_cutout.SpecCutout(
                masks_number=self.params['spec_cutout_masks_number'],
                time_mask_size=self.params['spec_cutout_time_mask_size'],
                frequency_mask_size=self.
                params['spec_cutout_frequency_mask_size'])
        else:
            self.spec_cutout = tf.keras.layers.Lambda(lambda x: x)