session-android/jni/webrtc/modules/audio_coding/neteq/background_noise.cc
Moxie Marlinspike d83a3d71bc Support for Signal calls.
Merge in RedPhone

// FREEBIE
2015-09-30 14:30:09 -07:00

261 lines
10 KiB
C++

/*
* Copyright (c) 2012 The WebRTC project authors. All Rights Reserved.
*
* Use of this source code is governed by a BSD-style license
* that can be found in the LICENSE file in the root of the source
* tree. An additional intellectual property rights grant can be found
* in the file PATENTS. All contributing project authors may
* be found in the AUTHORS file in the root of the source tree.
*/
#include "webrtc/modules/audio_coding/neteq/background_noise.h"
#include <assert.h>
#include <string.h> // memcpy
#include <algorithm> // min, max
#include "webrtc/common_audio/signal_processing/include/signal_processing_library.h"
#include "webrtc/modules/audio_coding/neteq/audio_multi_vector.h"
#include "webrtc/modules/audio_coding/neteq/post_decode_vad.h"
namespace webrtc {
BackgroundNoise::BackgroundNoise(size_t num_channels)
: num_channels_(num_channels),
channel_parameters_(new ChannelParameters[num_channels_]),
mode_(NetEq::kBgnOn) {
Reset();
}
BackgroundNoise::~BackgroundNoise() {}
void BackgroundNoise::Reset() {
initialized_ = false;
for (size_t channel = 0; channel < num_channels_; ++channel) {
channel_parameters_[channel].Reset();
}
// Keep _bgnMode as it is.
}
void BackgroundNoise::Update(const AudioMultiVector& input,
const PostDecodeVad& vad) {
if (vad.running() && vad.active_speech()) {
// Do not update the background noise parameters if we know that the signal
// is active speech.
return;
}
int32_t auto_correlation[kMaxLpcOrder + 1];
int16_t fiter_output[kMaxLpcOrder + kResidualLength];
int16_t reflection_coefficients[kMaxLpcOrder];
int16_t lpc_coefficients[kMaxLpcOrder + 1];
for (size_t channel_ix = 0; channel_ix < num_channels_; ++channel_ix) {
ChannelParameters& parameters = channel_parameters_[channel_ix];
int16_t temp_signal_array[kVecLen + kMaxLpcOrder] = {0};
int16_t* temp_signal = &temp_signal_array[kMaxLpcOrder];
memcpy(temp_signal,
&input[channel_ix][input.Size() - kVecLen],
sizeof(int16_t) * kVecLen);
int32_t sample_energy = CalculateAutoCorrelation(temp_signal, kVecLen,
auto_correlation);
if ((!vad.running() &&
sample_energy < parameters.energy_update_threshold) ||
(vad.running() && !vad.active_speech())) {
// Generate LPC coefficients.
if (auto_correlation[0] > 0) {
// Regardless of whether the filter is actually updated or not,
// update energy threshold levels, since we have in fact observed
// a low energy signal.
if (sample_energy < parameters.energy_update_threshold) {
// Never go under 1.0 in average sample energy.
parameters.energy_update_threshold = std::max(sample_energy, 1);
parameters.low_energy_update_threshold = 0;
}
// Only update BGN if filter is stable, i.e., if return value from
// Levinson-Durbin function is 1.
if (WebRtcSpl_LevinsonDurbin(auto_correlation, lpc_coefficients,
reflection_coefficients,
kMaxLpcOrder) != 1) {
return;
}
} else {
// Center value in auto-correlation is not positive. Do not update.
return;
}
// Generate the CNG gain factor by looking at the energy of the residual.
WebRtcSpl_FilterMAFastQ12(temp_signal + kVecLen - kResidualLength,
fiter_output, lpc_coefficients,
kMaxLpcOrder + 1, kResidualLength);
int32_t residual_energy = WebRtcSpl_DotProductWithScale(fiter_output,
fiter_output,
kResidualLength,
0);
// Check spectral flatness.
// Comparing the residual variance with the input signal variance tells
// if the spectrum is flat or not.
// If 20 * residual_energy >= sample_energy << 6, the spectrum is flat
// enough. Also ensure that the energy is non-zero.
if ((residual_energy * 20 >= (sample_energy << 6)) &&
(sample_energy > 0)) {
// Spectrum is flat enough; save filter parameters.
// |temp_signal| + |kVecLen| - |kMaxLpcOrder| points at the first of the
// |kMaxLpcOrder| samples in the residual signal, which will form the
// filter state for the next noise generation.
SaveParameters(channel_ix, lpc_coefficients,
temp_signal + kVecLen - kMaxLpcOrder, sample_energy,
residual_energy);
}
} else {
// Will only happen if post-decode VAD is disabled and |sample_energy| is
// not low enough. Increase the threshold for update so that it increases
// by a factor 4 in 4 seconds.
IncrementEnergyThreshold(channel_ix, sample_energy);
}
}
return;
}
int32_t BackgroundNoise::Energy(size_t channel) const {
assert(channel < num_channels_);
return channel_parameters_[channel].energy;
}
void BackgroundNoise::SetMuteFactor(size_t channel, int16_t value) {
assert(channel < num_channels_);
channel_parameters_[channel].mute_factor = value;
}
int16_t BackgroundNoise::MuteFactor(size_t channel) const {
assert(channel < num_channels_);
return channel_parameters_[channel].mute_factor;
}
const int16_t* BackgroundNoise::Filter(size_t channel) const {
assert(channel < num_channels_);
return channel_parameters_[channel].filter;
}
const int16_t* BackgroundNoise::FilterState(size_t channel) const {
assert(channel < num_channels_);
return channel_parameters_[channel].filter_state;
}
void BackgroundNoise::SetFilterState(size_t channel, const int16_t* input,
size_t length) {
assert(channel < num_channels_);
length = std::min(length, static_cast<size_t>(kMaxLpcOrder));
memcpy(channel_parameters_[channel].filter_state, input,
length * sizeof(int16_t));
}
int16_t BackgroundNoise::Scale(size_t channel) const {
assert(channel < num_channels_);
return channel_parameters_[channel].scale;
}
int16_t BackgroundNoise::ScaleShift(size_t channel) const {
assert(channel < num_channels_);
return channel_parameters_[channel].scale_shift;
}
int32_t BackgroundNoise::CalculateAutoCorrelation(
const int16_t* signal, int length, int32_t* auto_correlation) const {
int16_t signal_max = WebRtcSpl_MaxAbsValueW16(signal, length);
int correlation_scale = kLogVecLen -
WebRtcSpl_NormW32(signal_max * signal_max);
correlation_scale = std::max(0, correlation_scale);
static const int kCorrelationStep = -1;
WebRtcSpl_CrossCorrelation(auto_correlation, signal, signal, length,
kMaxLpcOrder + 1, correlation_scale,
kCorrelationStep);
// Number of shifts to normalize energy to energy/sample.
int energy_sample_shift = kLogVecLen - correlation_scale;
return auto_correlation[0] >> energy_sample_shift;
}
void BackgroundNoise::IncrementEnergyThreshold(size_t channel,
int32_t sample_energy) {
// TODO(hlundin): Simplify the below threshold update. What this code
// does is simply "threshold += (increment * threshold) >> 16", but due
// to the limited-width operations, it is not exactly the same. The
// difference should be inaudible, but bit-exactness would not be
// maintained.
assert(channel < num_channels_);
ChannelParameters& parameters = channel_parameters_[channel];
int32_t temp_energy =
WEBRTC_SPL_MUL_16_16_RSFT(kThresholdIncrement,
parameters.low_energy_update_threshold, 16);
temp_energy += kThresholdIncrement *
(parameters.energy_update_threshold & 0xFF);
temp_energy += (kThresholdIncrement *
((parameters.energy_update_threshold>>8) & 0xFF)) << 8;
parameters.low_energy_update_threshold += temp_energy;
parameters.energy_update_threshold += kThresholdIncrement *
(parameters.energy_update_threshold>>16);
parameters.energy_update_threshold +=
parameters.low_energy_update_threshold >> 16;
parameters.low_energy_update_threshold =
parameters.low_energy_update_threshold & 0x0FFFF;
// Update maximum energy.
// Decrease by a factor 1/1024 each time.
parameters.max_energy = parameters.max_energy -
(parameters.max_energy >> 10);
if (sample_energy > parameters.max_energy) {
parameters.max_energy = sample_energy;
}
// Set |energy_update_threshold| to no less than 60 dB lower than
// |max_energy_|. Adding 524288 assures proper rounding.
int32_t energy_update_threshold = (parameters.max_energy + 524288) >> 20;
if (energy_update_threshold > parameters.energy_update_threshold) {
parameters.energy_update_threshold = energy_update_threshold;
}
}
void BackgroundNoise::SaveParameters(size_t channel,
const int16_t* lpc_coefficients,
const int16_t* filter_state,
int32_t sample_energy,
int32_t residual_energy) {
assert(channel < num_channels_);
ChannelParameters& parameters = channel_parameters_[channel];
memcpy(parameters.filter, lpc_coefficients,
(kMaxLpcOrder+1) * sizeof(int16_t));
memcpy(parameters.filter_state, filter_state,
kMaxLpcOrder * sizeof(int16_t));
// Save energy level and update energy threshold levels.
// Never get under 1.0 in average sample energy.
parameters.energy = std::max(sample_energy, 1);
parameters.energy_update_threshold = parameters.energy;
parameters.low_energy_update_threshold = 0;
// Normalize residual_energy to 29 or 30 bits before sqrt.
int norm_shift = WebRtcSpl_NormW32(residual_energy) - 1;
if (norm_shift & 0x1) {
norm_shift -= 1; // Even number of shifts required.
}
assert(norm_shift >= 0); // Should always be positive.
residual_energy = residual_energy << norm_shift;
// Calculate scale and shift factor.
parameters.scale = WebRtcSpl_SqrtFloor(residual_energy);
// Add 13 to the |scale_shift_|, since the random numbers table is in
// Q13.
// TODO(hlundin): Move the "13" to where the |scale_shift_| is used?
parameters.scale_shift = 13 + ((kLogResidualLength + norm_shift) / 2);
initialized_ = true;
}
} // namespace webrtc