NeMo / tests /collections /asr /test_preprocessing_segment.py
dlxj
init
a7c2243
# Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import json
import os
import tempfile
from collections import namedtuple
from typing import List, Type, Union
import numpy as np
import pytest
import soundfile as sf
from nemo.collections.asr.parts.preprocessing.perturb import NoisePerturbation, SilencePerturbation
from nemo.collections.asr.parts.preprocessing.segment import AudioSegment, select_channels
class TestSelectChannels:
num_samples = 1000
max_diff_tol = 1e-9
@pytest.mark.unit
@pytest.mark.parametrize("channel_selector", [None, 'average', 0, 1, [0, 1]])
def test_single_channel_input(self, channel_selector: Type[Union[str, int, List[int]]]):
"""Cover the case with single-channel input signal.
Channel selector should not do anything in this case.
"""
golden_out = signal_in = np.random.rand(self.num_samples)
if channel_selector not in [None, 0, 'average']:
# Expect a failure if looking for a different channel when input is 1D
with pytest.raises(ValueError):
# UUT
select_channels(signal_in, channel_selector)
else:
# UUT
signal_out = select_channels(signal_in, channel_selector)
# Check difference
max_diff = np.max(np.abs(signal_out - golden_out))
assert max_diff < self.max_diff_tol
@pytest.mark.unit
@pytest.mark.parametrize("num_channels", [2, 4])
@pytest.mark.parametrize("channel_selector", [None, 'average', 0, [1], [0, 1]])
def test_multi_channel_input(self, num_channels: int, channel_selector: Type[Union[str, int, List[int]]]):
"""Cover the case with multi-channel input signal and single-
or multi-channel output.
"""
signal_in = np.random.rand(self.num_samples, num_channels)
# calculate golden output
if channel_selector is None:
golden_out = signal_in
elif channel_selector == 'average':
golden_out = np.mean(signal_in, axis=1)
else:
golden_out = signal_in[:, channel_selector].squeeze()
# UUT
signal_out = select_channels(signal_in, channel_selector)
# Check difference
max_diff = np.max(np.abs(signal_out - golden_out))
assert max_diff < self.max_diff_tol
@pytest.mark.unit
@pytest.mark.parametrize("num_channels", [1, 2])
@pytest.mark.parametrize("channel_selector", [2, [1, 2]])
def test_select_more_channels_than_available(
self, num_channels: int, channel_selector: Type[Union[str, int, List[int]]]
):
"""This test is expecting the UUT to fail because we ask for more channels
than available in the input signal.
"""
signal_in = np.random.rand(self.num_samples, num_channels)
# expect failure since we ask for more channels than available
with pytest.raises(ValueError):
# UUT
select_channels(signal_in, channel_selector)
class TestAudioSegment:
sample_rate = 16000
signal_duration_sec = 2
max_diff_tol = 1e-9
@property
def num_samples(self):
return self.sample_rate * self.signal_duration_sec
@pytest.mark.unit
@pytest.mark.parametrize("num_channels", [1, 4])
@pytest.mark.parametrize("channel_selector", [None, 'average', 0, 1, [0, 1]])
def test_init_single_channel(self, num_channels: int, channel_selector: Type[Union[str, int, List[int]]]):
"""Test the constructor directly."""
if num_channels == 1:
# samples is a one-dimensional vector for single-channel signal
samples = np.random.rand(self.num_samples)
else:
samples = np.random.rand(self.num_samples, num_channels)
if (isinstance(channel_selector, int) and channel_selector >= num_channels) or (
isinstance(channel_selector, list) and max(channel_selector) >= num_channels
):
# Expect a failure if looking for a different channel when input is 1D
with pytest.raises(ValueError):
# Construct UUT
uut = AudioSegment(samples=samples, sample_rate=self.sample_rate, channel_selector=channel_selector)
else:
# Construct UUT
uut = AudioSegment(samples=samples, sample_rate=self.sample_rate, channel_selector=channel_selector)
# Create golden reference
# Note: AudioSegment converts input samples to float32
golden_samples = select_channels(samples.astype('float32'), channel_selector)
expected_num_channels = 1 if golden_samples.ndim == 1 else golden_samples.shape[1]
# Test UUT
assert uut.num_channels == expected_num_channels
assert uut.num_samples == self.num_samples
assert uut.sample_rate == self.sample_rate
assert uut.duration == self.signal_duration_sec
max_diff = np.max(np.abs(uut.samples - golden_samples))
assert max_diff < self.max_diff_tol
# Test zero padding
pad_length = 42
uut.pad(pad_length, symmetric=False)
# compare to golden references
assert uut.num_samples == self.num_samples + pad_length
assert np.all(uut.samples[-pad_length:] == 0.0)
max_diff = np.max(np.abs(uut.samples[:-pad_length] - golden_samples))
assert max_diff < self.max_diff_tol
# Test subsegment
start_time = 0.2 * self.signal_duration_sec
end_time = 0.5 * self.signal_duration_sec
uut.subsegment(start_time=start_time, end_time=end_time)
# compare to golden references
start_sample = int(round(start_time * self.sample_rate))
end_sample = int(round(end_time * self.sample_rate))
max_diff = np.max(np.abs(uut.samples - golden_samples[start_sample:end_sample]))
assert max_diff < self.max_diff_tol
@pytest.mark.unit
@pytest.mark.parametrize("num_channels", [1, 4])
@pytest.mark.parametrize("channel_selector", [None, 'average', 0])
def test_from_file(self, num_channels, channel_selector):
"""Test loading a signal from a file."""
with tempfile.TemporaryDirectory() as test_dir:
# Prepare a wav file
audio_file = os.path.join(test_dir, 'audio.wav')
if num_channels == 1:
# samples is a one-dimensional vector for single-channel signal
samples = np.random.rand(self.num_samples)
else:
samples = np.random.rand(self.num_samples, num_channels)
sf.write(audio_file, samples, self.sample_rate, 'float')
# Create UUT
uut = AudioSegment.from_file(audio_file, channel_selector=channel_selector)
# Create golden reference
# Note: AudioSegment converts input samples to float32
golden_samples = select_channels(samples.astype('float32'), channel_selector)
expected_num_channels = 1 if golden_samples.ndim == 1 else golden_samples.shape[1]
# Test UUT
assert uut.num_channels == expected_num_channels
assert uut.num_samples == self.num_samples
assert uut.sample_rate == self.sample_rate
assert uut.duration == self.signal_duration_sec
max_diff = np.max(np.abs(uut.samples - golden_samples))
assert max_diff < self.max_diff_tol
@pytest.mark.unit
@pytest.mark.parametrize("data_channels", [1, 4])
@pytest.mark.parametrize("noise_channels", [1, 4])
def test_noise_perturb_channels(self, data_channels, noise_channels):
"""Test loading a signal from a file."""
with tempfile.TemporaryDirectory() as test_dir:
# Prepare a wav file
audio_file = os.path.join(test_dir, 'audio.wav')
if data_channels == 1:
# samples is a one-dimensional vector for single-channel signal
samples = np.random.rand(self.num_samples)
else:
samples = np.random.rand(self.num_samples, data_channels)
sf.write(audio_file, samples, self.sample_rate, 'float')
noise_file = os.path.join(test_dir, 'noise.wav')
if noise_channels == 1:
# samples is a one-dimensional vector for single-channel signal
samples = np.random.rand(self.num_samples)
else:
samples = np.random.rand(self.num_samples, noise_channels)
sf.write(noise_file, samples, self.sample_rate, 'float')
manifest_file = os.path.join(test_dir, 'noise_manifest.json')
with open(manifest_file, 'w') as fout:
item = {'audio_filepath': os.path.abspath(noise_file), 'label': '-', 'duration': 0.1, 'offset': 0.0}
fout.write(f'{json.dumps(item)}\n')
perturber = NoisePerturbation(manifest_file)
audio = AudioSegment.from_file(audio_file)
noise = AudioSegment.from_file(noise_file)
if data_channels == noise_channels:
try:
_ = perturber.perturb_with_input_noise(audio, noise, ref_mic=0)
except ValueError as e:
assert False, "perturb_with_input_noise failed with ref_mic=0"
with pytest.raises(ValueError):
_ = perturber.perturb_with_input_noise(audio, noise, ref_mic=data_channels)
try:
_ = perturber.perturb_with_foreground_noise(audio, noise, ref_mic=0)
except ValueError as e:
assert False, "perturb_with_foreground_noise failed with ref_mic=0"
with pytest.raises(ValueError):
_ = perturber.perturb_with_foreground_noise(audio, noise, ref_mic=data_channels)
else:
with pytest.raises(ValueError):
_ = perturber.perturb_with_input_noise(audio, noise)
with pytest.raises(ValueError):
_ = perturber.perturb_with_foreground_noise(audio, noise)
def test_silence_perturb(self):
"""Test loading a signal from a file and apply silence perturbation"""
with tempfile.TemporaryDirectory() as test_dir:
# Prepare a wav file
audio_file = os.path.join(test_dir, 'audio.wav')
# samples is a one-dimensional vector for single-channel signal
samples = np.random.rand(self.num_samples)
sf.write(audio_file, samples, self.sample_rate, 'float')
dur = 2
perturber = SilencePerturbation(
min_start_silence_secs=dur,
max_start_silence_secs=dur,
min_end_silence_secs=dur,
max_end_silence_secs=dur,
)
audio = AudioSegment.from_file(audio_file)
ori_audio_len = len(audio._samples)
_ = perturber.perturb(audio)
assert len(audio._samples) == ori_audio_len + 2 * dur * self.sample_rate
@pytest.mark.unit
@pytest.mark.parametrize(
"num_channels, channel_selectors",
[
(1, [None, 'average', 0]),
(3, [None, 'average', 0, 1, [0, 1]]),
],
)
@pytest.mark.parametrize("sample_rate", [8000, 16000, 22500])
def test_audio_segment_from_file(self, tmpdir, num_channels, channel_selectors, sample_rate):
"""Test loading and audio signal from a file."""
signal_len_sec = 4
num_samples = signal_len_sec * sample_rate
num_examples = 10
rtol, atol = 1e-5, 1e-6
for n in range(num_examples):
# Create a test vector
audio_file = os.path.join(tmpdir, f'test_audio_{n:02}.wav')
samples = np.random.randn(num_samples, num_channels)
sf.write(audio_file, samples, sample_rate, 'float')
for channel_selector in channel_selectors:
if channel_selector is None:
ref_samples = samples
elif isinstance(channel_selector, int) or isinstance(channel_selector, list):
ref_samples = samples[:, channel_selector]
elif channel_selector == 'average':
ref_samples = np.mean(samples, axis=1)
else:
raise ValueError(f'Unexpected value of channel_selector {channel_selector}')
# 1) Load complete audio
# Reference
ref_samples = ref_samples.squeeze()
ref_channels = 1 if ref_samples.ndim == 1 else ref_samples.shape[1]
# UUT
audio_segment = AudioSegment.from_file(audio_file, channel_selector=channel_selector)
# Test
assert (
audio_segment.sample_rate == sample_rate
), f'channel_selector {channel_selector}, sample rate not matching: {audio_segment.sample_rate} != {sample_rate}'
assert (
audio_segment.num_channels == ref_channels
), f'channel_selector {channel_selector}, num channels not matching: {audio_segment.num_channels} != {ref_channels}'
assert audio_segment.num_samples == len(
ref_samples
), f'channel_selector {channel_selector}, num samples not matching: {audio_segment.num_samples} != {len(ref_samples)}'
assert np.allclose(
audio_segment.samples, ref_samples, rtol=rtol, atol=atol
), f'channel_selector {channel_selector}, samples not matching'
# 2) Load a with duration=None and offset=None, should load the whole audio
# UUT
audio_segment = AudioSegment.from_file(
audio_file, offset=None, duration=None, channel_selector=channel_selector
)
# Test
assert (
audio_segment.sample_rate == sample_rate
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, sample rate not matching: {audio_segment.sample_rate} != {sample_rate}'
assert (
audio_segment.num_channels == ref_channels
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, num channels not matching: {audio_segment.num_channels} != {ref_channels}'
assert audio_segment.num_samples == len(
ref_samples
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, num samples not matching: {audio_segment.num_samples} != {len(ref_samples)}'
assert np.allclose(
audio_segment.samples, ref_samples, rtol=rtol, atol=atol
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, samples not matching'
# 3) Load a random segment
offset = 0.45 * np.random.rand() * signal_len_sec
duration = 0.45 * np.random.rand() * signal_len_sec
# Reference
start = int(offset * sample_rate)
end = start + int(duration * sample_rate)
ref_samples = ref_samples[start:end, ...]
# UUT
audio_segment = AudioSegment.from_file(
audio_file, offset=offset, duration=duration, channel_selector=channel_selector
)
# Test
assert (
audio_segment.sample_rate == sample_rate
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, sample rate not matching: {audio_segment.sample_rate} != {sample_rate}'
assert (
audio_segment.num_channels == ref_channels
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, num channels not matching: {audio_segment.num_channels} != {ref_channels}'
assert audio_segment.num_samples == len(
ref_samples
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, num samples not matching: {audio_segment.num_samples} != {len(ref_samples)}'
assert np.allclose(
audio_segment.samples, ref_samples, rtol=rtol, atol=atol
), f'channel_selector {channel_selector}, offset {offset}, duration {duration}, samples not matching'
@pytest.mark.unit
@pytest.mark.parametrize(
"num_channels, channel_selectors",
[
(1, [None, 'average', 0]),
(3, [None, 'average', 0, 1, [0, 1]]),
],
)
@pytest.mark.parametrize("offset", [0, 1.5])
@pytest.mark.parametrize("duration", [1, 2])
def test_audio_segment_multichannel_with_list(self, tmpdir, num_channels, channel_selectors, offset, duration):
"""Test loading an audio signal from a list of single-channel files."""
sample_rate = 16000
signal_len_sec = 5
num_samples = signal_len_sec * sample_rate
rtol, atol = 1e-5, 1e-6
# Random samples
samples = np.random.rand(num_samples, num_channels)
# Save audio
audio_files = []
for m in range(num_channels):
a_file = os.path.join(tmpdir, f'ch_{m}.wav')
sf.write(a_file, samples[:, m], sample_rate)
audio_files.append(a_file)
mc_file = os.path.join(tmpdir, f'mc.wav')
sf.write(mc_file, samples, sample_rate)
for channel_selector in channel_selectors:
# UUT: loading audio from a list of files
uut_segment = AudioSegment.from_file(
audio_file=audio_files, offset=offset, duration=duration, channel_selector=channel_selector
)
# Reference: load from the original file
ref_segment = AudioSegment.from_file(
audio_file=mc_file, offset=offset, duration=duration, channel_selector=channel_selector
)
# Check
assert (
uut_segment.sample_rate == ref_segment.sample_rate
), f'channel_selector {channel_selector}: expecting {ref_segment.sample_rate}, but UUT segment has {uut_segment.sample_rate}'
assert (
uut_segment.num_samples == ref_segment.num_samples
), f'channel_selector {channel_selector}: expecting {ref_segment.num_samples}, but UUT segment has {uut_segment.num_samples}'
assert np.allclose(
uut_segment.samples, ref_segment.samples, rtol=rtol, atol=atol
), f'channel_selector {channel_selector}: samples not matching'
# Try to get a channel that is out of range.
with pytest.raises(RuntimeError, match="Channel cannot be selected"):
AudioSegment.from_file(audio_file=audio_files, channel_selector=num_channels)
if num_channels > 1:
# Try to load a list of multichannel files
# This is expected to fail since we only support loading a single-channel signal
# from each file when audio_file is a list
with pytest.raises(RuntimeError, match="Expecting a single-channel audio signal"):
AudioSegment.from_file(audio_file=[mc_file, mc_file])
with pytest.raises(RuntimeError, match="Expecting a single-channel audio signal"):
AudioSegment.from_file(audio_file=[mc_file, mc_file], channel_selector=0)
@pytest.mark.unit
@pytest.mark.parametrize("target_sr", [8000, 16000])
def test_audio_segment_trim_match(self, tmpdir, target_sr):
"""Test loading and audio signal from a file matches when using a path and a list
for different target_sr, int_values and trim setups.
"""
sample_rate = 24000
signal_len_sec = 2
num_samples = signal_len_sec * sample_rate
num_examples = 10
TrimSetup = namedtuple("TrimSetup", "ref top_db frame_length hop_length")
trim_setups = []
trim_setups.append(TrimSetup(np.max, 10, 2048, 1024))
trim_setups.append(TrimSetup(1.0, 35, 2048, 1024))
trim_setups.append(TrimSetup(0.8, 45, 2048, 1024))
for n in range(num_examples):
# Create a test vector
audio_file = os.path.join(tmpdir, f'test_audio_{n:02}.wav')
samples = np.random.randn(num_samples)
# normalize
samples = samples / np.max(samples)
# apply random scaling and window to have some samples cut by trim
samples = np.random.rand() * np.hanning(num_samples) * samples
sf.write(audio_file, samples, sample_rate, 'float')
for trim_setup in trim_setups:
# UUT 1: load from a path
audio_segment_1 = AudioSegment.from_file(
audio_file,
target_sr=target_sr,
trim=True,
trim_ref=trim_setup.ref,
trim_top_db=trim_setup.top_db,
trim_frame_length=trim_setup.frame_length,
trim_hop_length=trim_setup.hop_length,
)
# UUT 2: load from a list
audio_segment_2 = AudioSegment.from_file(
[audio_file],
target_sr=target_sr,
trim=True,
trim_ref=trim_setup.ref,
trim_top_db=trim_setup.top_db,
trim_frame_length=trim_setup.frame_length,
trim_hop_length=trim_setup.hop_length,
)
# Test
assert audio_segment_1 == audio_segment_2, f'trim setup {trim_setup}, loaded segments not matching'