aboutsummaryrefslogtreecommitdiff
path: root/python/pyarmnn/examples/speech_recognition/tests/test_mfcc.py
diff options
context:
space:
mode:
Diffstat (limited to 'python/pyarmnn/examples/speech_recognition/tests/test_mfcc.py')
-rw-r--r--python/pyarmnn/examples/speech_recognition/tests/test_mfcc.py286
1 files changed, 0 insertions, 286 deletions
diff --git a/python/pyarmnn/examples/speech_recognition/tests/test_mfcc.py b/python/pyarmnn/examples/speech_recognition/tests/test_mfcc.py
deleted file mode 100644
index d692ab51c8..0000000000
--- a/python/pyarmnn/examples/speech_recognition/tests/test_mfcc.py
+++ /dev/null
@@ -1,286 +0,0 @@
-# Copyright © 2020 Arm Ltd and Contributors. All rights reserved.
-# SPDX-License-Identifier: MIT
-
-import numpy as np
-
-from context import preprocess
-
-test_wav = [
- -3,0,1,-1,2,3,-2,2,
- 1,-2,0,3,-1,8,3,2,
- -1,-1,2,7,3,5,6,6,
- 6,12,5,6,3,3,5,4,
- 4,6,7,7,7,3,7,2,
- 8,4,4,2,-4,-1,-1,-4,
- 2,1,-1,-4,0,-7,-6,-2,
- -5,1,-5,-1,-7,-3,-3,-7,
- 0,-3,3,-5,0,1,-2,-2,
- -3,-3,-7,-3,-2,-6,-5,-8,
- -2,-8,4,-9,-4,-9,-5,-5,
- -3,-9,-3,-9,-1,-7,-4,1,
- -3,2,-8,-4,-4,-5,1,-3,
- -1,0,-1,-2,-3,-2,-4,-1,
- 1,-1,3,0,3,2,0,0,
- 0,-3,1,1,0,8,3,4,
- 1,5,6,4,7,3,3,0,
- 3,6,7,6,4,5,9,9,
- 5,5,8,1,6,9,6,6,
- 7,1,8,1,5,0,5,5,
- 0,3,2,7,2,-3,3,0,
- 3,0,0,0,2,0,-1,-1,
- -2,-3,-8,0,1,0,-3,-3,
- -3,-2,-3,-3,-4,-6,-2,-8,
- -9,-4,-1,-5,-3,-3,-4,-3,
- -6,3,0,-1,-2,-9,-4,-2,
- 2,-1,3,-5,-5,-2,0,-2,
- 0,-1,-3,1,-2,9,4,5,
- 2,2,1,0,-6,-2,0,0,
- 0,-1,4,-4,3,-7,-1,5,
- -6,-1,-5,4,3,9,-2,1,
- 3,0,0,-2,1,2,1,1,
- 0,3,2,-1,3,-3,7,0,
- 0,3,2,2,-2,3,-2,2,
- -3,4,-1,-1,-5,-1,-3,-2,
- 1,-1,3,2,4,1,2,-2,
- 0,2,7,0,8,-3,6,-3,
- 6,1,2,-3,-1,-1,-1,1,
- -2,2,1,2,0,-2,3,-2,
- 3,-2,1,0,-3,-1,-2,-4,
- -6,-5,-8,-1,-4,0,-3,-1,
- -1,-1,0,-2,-3,-7,-1,0,
- 1,5,0,5,1,1,-3,0,
- -6,3,-8,4,-8,6,-6,1,
- -6,-2,-5,-6,0,-5,4,-1,
- 4,-2,1,2,1,0,-2,0,
- 0,2,-2,2,-5,2,0,-2,
- 1,-2,0,5,1,0,1,5,
- 0,8,3,2,2,0,5,-2,
- 3,1,0,1,0,-2,-1,-3,
- 1,-1,3,0,3,0,-2,-1,
- -4,-4,-4,-1,-4,-4,-3,-6,
- -3,-7,-3,-1,-2,0,-5,-4,
- -7,-3,-2,-2,1,2,2,8,
- 5,4,2,4,3,5,0,3,
- 3,6,4,2,2,-2,4,-2,
- 3,3,2,1,1,4,-5,2,
- -3,0,-1,1,-2,2,5,1,
- 4,2,3,1,-1,1,0,6,
- 0,-2,-1,1,-1,2,-5,-1,
- -5,-1,-6,-3,-3,2,4,0,
- -1,-5,3,-4,-1,-3,-4,1,
- -4,1,-1,-1,0,-5,-4,-2,
- -1,-1,-3,-7,-3,-3,4,4,
-]
-
-def test_mel_scale_function_with_htk_true():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
-
- mfcc_inst = preprocess.MFCC(mfcc_params)
-
- mel = mfcc_inst.mel_scale(16, True)
-
- assert np.isclose(mel, 25.470010570730597)
-
-
-def test_mel_scale_function_with_htk_false():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
-
- mfcc_inst = preprocess.MFCC(mfcc_params)
-
- mel = mfcc_inst.mel_scale(16, False)
-
- assert np.isclose(mel, 0.24)
-
-
-def test_inverse_mel_scale_function_with_htk_true():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
-
- mfcc_inst = preprocess.MFCC(mfcc_params)
-
- mel = mfcc_inst.inv_mel_scale(16, True)
-
- assert np.isclose(mel, 10.008767240008943)
-
-
-def test_inverse_mel_scale_function_with_htk_false():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
-
- mfcc_inst = preprocess.MFCC(mfcc_params)
-
- mel = mfcc_inst.inv_mel_scale(16, False)
-
- assert np.isclose(mel, 1071.170287494467)
-
-
-def test_create_mel_filter_bank():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
-
- mfcc_inst = preprocess.MFCC(mfcc_params)
-
- mel_filter_bank = mfcc_inst.create_mel_filter_bank()
-
- assert len(mel_filter_bank) == 128
-
- assert str(mel_filter_bank[0]) == "[0.02837754]"
- assert str(mel_filter_bank[1]) == "[0.01438901 0.01398853]"
- assert str(mel_filter_bank[2]) == "[0.02877802]"
- assert str(mel_filter_bank[3]) == "[0.04236608]"
- assert str(mel_filter_bank[4]) == "[0.00040047 0.02797707]"
- assert str(mel_filter_bank[5]) == "[0.01478948 0.01358806]"
- assert str(mel_filter_bank[50]) == "[0.03298853]"
- assert str(mel_filter_bank[100]) == "[0.00260166 0.00588759 0.00914814 0.00798015 0.00476919 0.00158245]"
-
-
-def test_mfcc_compute():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- audio_data = np.array(test_wav) / (2 ** 15)
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
- mfcc_inst = preprocess.MFCC(mfcc_params)
- mfcc_feats = mfcc_inst.mfcc_compute(audio_data)
-
- assert np.isclose((mfcc_feats[0]), -834.9656973095651)
- assert np.isclose((mfcc_feats[1]), 21.026915475076322)
- assert np.isclose((mfcc_feats[2]), 18.628541708201688)
- assert np.isclose((mfcc_feats[3]), 7.341153529494758)
- assert np.isclose((mfcc_feats[4]), 18.907974386153214)
- assert np.isclose((mfcc_feats[5]), -5.360387487466194)
- assert np.isclose((mfcc_feats[6]), 6.523572638527085)
- assert np.isclose((mfcc_feats[7]), -11.270643644983316)
- assert np.isclose((mfcc_feats[8]), 8.375177203773777)
- assert np.isclose((mfcc_feats[9]), 12.06721844362991)
- assert np.isclose((mfcc_feats[10]), 8.30815892468875)
- assert np.isclose((mfcc_feats[11]), -13.499911910889917)
- assert np.isclose((mfcc_feats[12]), -18.176121251436165)
-
-
-def test_sliding_window_for_small_num_samples():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- mode_input_size = 9
- stride = 160
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- audio_data = np.array(test_wav) / (2 ** 15)
-
- full_audio_data = np.tile(audio_data, 9)
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
- mfcc_inst = preprocess.MFCC(mfcc_params)
- preprocessor = preprocess.Preprocessor(mfcc_inst, mode_input_size, stride)
-
- input_tensor = preprocessor.extract_features(full_audio_data)
-
- assert np.isclose(input_tensor[0][0], -3.4660944830426454)
- assert np.isclose(input_tensor[0][1], 0.3587718932127629)
- assert np.isclose(input_tensor[0][2], 0.3480551325669172)
- assert np.isclose(input_tensor[0][3], 0.2976191917228921)
- assert np.isclose(input_tensor[0][4], 0.3493037340849936)
- assert np.isclose(input_tensor[0][5], 0.2408643285767937)
- assert np.isclose(input_tensor[0][6], 0.2939659585037282)
- assert np.isclose(input_tensor[0][7], 0.2144552669573928)
- assert np.isclose(input_tensor[0][8], 0.302239565899944)
- assert np.isclose(input_tensor[0][9], 0.3187368787077345)
- assert np.isclose(input_tensor[0][10], 0.3019401051295793)
- assert np.isclose(input_tensor[0][11], 0.20449412797602678)
-
- assert np.isclose(input_tensor[0][38], -0.18751440767749533)
-
-
-def test_sliding_window_for_wav_2_letter_sized_input():
- samp_freq = 16000
- frame_len_ms = 32
- frame_len_samples = samp_freq * frame_len_ms * 0.001
- num_mfcc_feats = 13
- mode_input_size = 296
- stride = 160
- num_fbank_bins = 128
- mel_lo_freq = 0
- mil_hi_freq = 8000
- use_htk = False
- n_FFT = 512
-
- audio_data = np.zeros(47712, dtype=int)
-
- mfcc_params = preprocess.MFCCParams(samp_freq, num_fbank_bins, mel_lo_freq, mil_hi_freq, num_mfcc_feats,
- frame_len_samples, use_htk, n_FFT)
-
- mfcc_inst = preprocess.MFCC(mfcc_params)
- preprocessor = preprocess.Preprocessor(mfcc_inst, mode_input_size, stride)
-
- input_tensor = preprocessor.extract_features(audio_data)
-
- assert len(input_tensor[0]) == 39
- assert len(input_tensor) == 296