From 35ee397e060283d30c098ae5e17836316bbec08b Mon Sep 17 00:00:00 2001 From: Jan Buethe Date: Tue, 5 Sep 2023 12:29:38 +0200 Subject: added LPCNet torch implementation Signed-off-by: Jan Buethe --- dnn/torch/lpcnet/models/lpcnet.py | 274 ++++++++++++++++++++++++++++++++++++++ 1 file changed, 274 insertions(+) create mode 100644 dnn/torch/lpcnet/models/lpcnet.py (limited to 'dnn/torch/lpcnet/models/lpcnet.py') diff --git a/dnn/torch/lpcnet/models/lpcnet.py b/dnn/torch/lpcnet/models/lpcnet.py new file mode 100644 index 00000000..e20ae68d --- /dev/null +++ b/dnn/torch/lpcnet/models/lpcnet.py @@ -0,0 +1,274 @@ +import torch +from torch import nn +import numpy as np + +from utils.ulaw import lin2ulawq, ulaw2lin +from utils.sample import sample_excitation +from utils.pcm import clip_to_int16 +from utils.sparsification import GRUSparsifier, calculate_gru_flops_per_step +from utils.layers import DualFC +from utils.misc import get_pdf_from_tree + + +class LPCNet(nn.Module): + def __init__(self, config): + super(LPCNet, self).__init__() + + # + self.input_layout = config['input_layout'] + self.feature_history = config['feature_history'] + self.feature_lookahead = config['feature_lookahead'] + + # frame rate network parameters + self.feature_dimension = config['feature_dimension'] + self.period_embedding_dim = config['period_embedding_dim'] + self.period_levels = config['period_levels'] + self.feature_channels = self.feature_dimension + self.period_embedding_dim + self.feature_conditioning_dim = config['feature_conditioning_dim'] + self.feature_conv_kernel_size = config['feature_conv_kernel_size'] + + + # frame rate network layers + self.period_embedding = nn.Embedding(self.period_levels, self.period_embedding_dim) + self.feature_conv1 = nn.Conv1d(self.feature_channels, self.feature_conditioning_dim, self.feature_conv_kernel_size, padding='valid') + self.feature_conv2 = nn.Conv1d(self.feature_conditioning_dim, self.feature_conditioning_dim, self.feature_conv_kernel_size, padding='valid') + self.feature_dense1 = nn.Linear(self.feature_conditioning_dim, self.feature_conditioning_dim) + self.feature_dense2 = nn.Linear(*(2*[self.feature_conditioning_dim])) + + # sample rate network parameters + self.frame_size = config['frame_size'] + self.signal_levels = config['signal_levels'] + self.signal_embedding_dim = config['signal_embedding_dim'] + self.gru_a_units = config['gru_a_units'] + self.gru_b_units = config['gru_b_units'] + self.output_levels = config['output_levels'] + self.hsampling = config.get('hsampling', False) + + self.gru_a_input_dim = len(self.input_layout['signals']) * self.signal_embedding_dim + self.feature_conditioning_dim + self.gru_b_input_dim = self.gru_a_units + self.feature_conditioning_dim + + # sample rate network layers + self.signal_embedding = nn.Embedding(self.signal_levels, self.signal_embedding_dim) + self.gru_a = nn.GRU(self.gru_a_input_dim, self.gru_a_units, batch_first=True) + self.gru_b = nn.GRU(self.gru_b_input_dim, self.gru_b_units, batch_first=True) + self.dual_fc = DualFC(self.gru_b_units, self.output_levels) + + # sparsification + self.sparsifier = [] + + # GRU A + if 'gru_a' in config['sparsification']: + gru_config = config['sparsification']['gru_a'] + task_list = [(self.gru_a, gru_config['params'])] + self.sparsifier.append(GRUSparsifier(task_list, + gru_config['start'], + gru_config['stop'], + gru_config['interval'], + gru_config['exponent']) + ) + self.gru_a_flops_per_step = calculate_gru_flops_per_step(self.gru_a, + gru_config['params'], drop_input=True) + else: + self.gru_a_flops_per_step = calculate_gru_flops_per_step(self.gru_a, drop_input=True) + + # GRU B + if 'gru_b' in config['sparsification']: + gru_config = config['sparsification']['gru_b'] + task_list = [(self.gru_b, gru_config['params'])] + self.sparsifier.append(GRUSparsifier(task_list, + gru_config['start'], + gru_config['stop'], + gru_config['interval'], + gru_config['exponent']) + ) + self.gru_b_flops_per_step = calculate_gru_flops_per_step(self.gru_b, + gru_config['params']) + else: + self.gru_b_flops_per_step = calculate_gru_flops_per_step(self.gru_b) + + # inference parameters + self.lpc_gamma = config.get('lpc_gamma', 1) + + def sparsify(self): + for sparsifier in self.sparsifier: + sparsifier.step() + + def get_gflops(self, fs, verbose=False): + gflops = 0 + + # frame rate network + conditioning_dim = self.feature_conditioning_dim + feature_channels = self.feature_channels + frame_rate = fs / self.frame_size + frame_rate_network_complexity = 1e-9 * 2 * (5 * conditioning_dim + 3 * feature_channels) * conditioning_dim * frame_rate + if verbose: + print(f"frame rate network: {frame_rate_network_complexity} GFLOPS") + gflops += frame_rate_network_complexity + + # gru a + gru_a_rate = fs + gru_a_complexity = 1e-9 * gru_a_rate * self.gru_a_flops_per_step + if verbose: + print(f"gru A: {gru_a_complexity} GFLOPS") + gflops += gru_a_complexity + + # gru b + gru_b_rate = fs + gru_b_complexity = 1e-9 * gru_b_rate * self.gru_b_flops_per_step + if verbose: + print(f"gru B: {gru_b_complexity} GFLOPS") + gflops += gru_b_complexity + + + # dual fcs + fc = self.dual_fc + rate = fs + input_size = fc.dense1.in_features + output_size = fc.dense1.out_features + dual_fc_complexity = 1e-9 * (4 * input_size * output_size + 22 * output_size) * rate + if self.hsampling: + dual_fc_complexity /= 8 + if verbose: + print(f"dual_fc: {dual_fc_complexity} GFLOPS") + gflops += dual_fc_complexity + + if verbose: + print(f'total: {gflops} GFLOPS') + + return gflops + + def frame_rate_network(self, features, periods): + + embedded_periods = torch.flatten(self.period_embedding(periods), 2, 3) + features = torch.concat((features, embedded_periods), dim=-1) + + # convert to channels first and calculate conditioning vector + c = torch.permute(features, [0, 2, 1]) + + c = torch.tanh(self.feature_conv1(c)) + c = torch.tanh(self.feature_conv2(c)) + # back to channels last + c = torch.permute(c, [0, 2, 1]) + c = torch.tanh(self.feature_dense1(c)) + c = torch.tanh(self.feature_dense2(c)) + + return c + + def sample_rate_network(self, signals, c, gru_states): + embedded_signals = torch.flatten(self.signal_embedding(signals), 2, 3) + c_upsampled = torch.repeat_interleave(c, self.frame_size, dim=1) + + y = torch.concat((embedded_signals, c_upsampled), dim=-1) + y, gru_a_state = self.gru_a(y, gru_states[0]) + y = torch.concat((y, c_upsampled), dim=-1) + y, gru_b_state = self.gru_b(y, gru_states[1]) + + y = self.dual_fc(y) + + if self.hsampling: + y = torch.sigmoid(y) + log_probs = torch.log(get_pdf_from_tree(y) + 1e-6) + else: + log_probs = torch.log_softmax(y, dim=-1) + + return log_probs, (gru_a_state, gru_b_state) + + def decoder(self, signals, c, gru_states): + embedded_signals = torch.flatten(self.signal_embedding(signals), 2, 3) + + y = torch.concat((embedded_signals, c), dim=-1) + y, gru_a_state = self.gru_a(y, gru_states[0]) + y = torch.concat((y, c), dim=-1) + y, gru_b_state = self.gru_b(y, gru_states[1]) + + y = self.dual_fc(y) + + if self.hsampling: + y = torch.sigmoid(y) + probs = get_pdf_from_tree(y) + else: + probs = torch.softmax(y, dim=-1) + + return probs, (gru_a_state, gru_b_state) + + def forward(self, features, periods, signals, gru_states): + + c = self.frame_rate_network(features, periods) + log_probs, _ = self.sample_rate_network(signals, c, gru_states) + + return log_probs + + def generate(self, features, periods, lpcs): + + with torch.no_grad(): + device = self.parameters().__next__().device + + num_frames = features.shape[0] - self.feature_history - self.feature_lookahead + lpc_order = lpcs.shape[-1] + num_input_signals = len(self.input_layout['signals']) + pitch_corr_position = self.input_layout['features']['pitch_corr'][0] + + # signal buffers + pcm = torch.zeros((num_frames * self.frame_size + lpc_order)) + output = torch.zeros((num_frames * self.frame_size), dtype=torch.int16) + mem = 0 + + # state buffers + gru_a_state = torch.zeros((1, 1, self.gru_a_units)) + gru_b_state = torch.zeros((1, 1, self.gru_b_units)) + gru_states = [gru_a_state, gru_b_state] + + input_signals = torch.zeros((1, 1, num_input_signals), dtype=torch.long) + 128 + + # push data to device + features = features.to(device) + periods = periods.to(device) + lpcs = lpcs.to(device) + + # lpc weighting + weights = torch.FloatTensor([self.lpc_gamma ** (i + 1) for i in range(lpc_order)]).to(device) + lpcs = lpcs * weights + + # run feature encoding + c = self.frame_rate_network(features.unsqueeze(0), periods.unsqueeze(0)) + + for frame_index in range(num_frames): + frame_start = frame_index * self.frame_size + pitch_corr = features[frame_index + self.feature_history, pitch_corr_position] + a = - torch.flip(lpcs[frame_index + self.feature_history], [0]) + current_c = c[:, frame_index : frame_index + 1, :] + + for i in range(self.frame_size): + pcm_position = frame_start + i + lpc_order + output_position = frame_start + i + + # prepare input + pred = torch.sum(pcm[pcm_position - lpc_order : pcm_position] * a) + if 'prediction' in self.input_layout['signals']: + input_signals[0, 0, self.input_layout['signals']['prediction']] = lin2ulawq(pred) + + # run single step of sample rate network + probs, gru_states = self.decoder( + input_signals, + current_c, + gru_states + ) + + # sample from output + exc_ulaw = sample_excitation(probs, pitch_corr) + + # signal generation + exc = ulaw2lin(exc_ulaw) + sig = exc + pred + pcm[pcm_position] = sig + mem = 0.85 * mem + float(sig) + output[output_position] = clip_to_int16(round(mem)) + + # buffer update + if 'last_signal' in self.input_layout['signals']: + input_signals[0, 0, self.input_layout['signals']['last_signal']] = lin2ulawq(sig) + + if 'last_error' in self.input_layout['signals']: + input_signals[0, 0, self.input_layout['signals']['last_error']] = lin2ulawq(exc) + + return output -- cgit v1.2.3