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| """ |
| Pooling functions to aggregate frame-level deep features |
| into segment-level speaker embeddings |
| |
| High-order statistics are surprisingly effective, TSDP acts similarly as TSTP, |
| even though we remove the mean statistic, on Voxceleb. |
| """ |
|
|
| import torch |
| import torch.nn as nn |
| import torch.nn.functional as F |
|
|
|
|
| class TAP(nn.Module): |
| """ |
| Temporal average pooling, only first-order mean is considered |
| """ |
|
|
| def __init__(self, in_dim=0, **kwargs): |
| super(TAP, self).__init__() |
| self.in_dim = in_dim |
|
|
| def forward(self, x): |
| pooling_mean = x.mean(dim=-1) |
| |
| pooling_mean = pooling_mean.flatten(start_dim=1) |
| return pooling_mean |
|
|
| def get_out_dim(self): |
| self.out_dim = self.in_dim |
| return self.out_dim |
|
|
|
|
| class TSDP(nn.Module): |
| """ |
| Temporal standard deviation pooling, only second-order std is considered |
| """ |
|
|
| def __init__(self, in_dim=0, **kwargs): |
| super(TSDP, self).__init__() |
| self.in_dim = in_dim |
|
|
| def forward(self, x): |
| |
| pooling_std = torch.sqrt(torch.var(x, dim=-1) + 1e-7) |
| pooling_std = pooling_std.flatten(start_dim=1) |
| return pooling_std |
|
|
| def get_out_dim(self): |
| self.out_dim = self.in_dim |
| return self.out_dim |
|
|
|
|
| class TSTP(nn.Module): |
| """ |
| Temporal statistics pooling, concatenate mean and std, which is used in |
| x-vector |
| Comment: simple concatenation can not make full use of both statistics |
| """ |
|
|
| def __init__(self, in_dim=0, **kwargs): |
| super(TSTP, self).__init__() |
| self.in_dim = in_dim |
|
|
| def forward(self, x): |
| |
| pooling_mean = x.mean(dim=-1) |
| pooling_std = torch.sqrt(torch.var(x, dim=-1) + 1e-7) |
| pooling_mean = pooling_mean.flatten(start_dim=1) |
| pooling_std = pooling_std.flatten(start_dim=1) |
| stats = torch.cat((pooling_mean, pooling_std), 1) |
| return stats |
|
|
| def get_out_dim(self): |
| self.out_dim = self.in_dim * 2 |
| return self.out_dim |
|
|
|
|
| class ASTP(nn.Module): |
| """ Attentive statistics pooling: Channel- and context-dependent |
| statistics pooling, first used in ECAPA_TDNN. |
| """ |
|
|
| def __init__(self, |
| in_dim, |
| bottleneck_dim=128, |
| global_context_att=False, |
| **kwargs): |
| super(ASTP, self).__init__() |
| self.in_dim = in_dim |
| self.global_context_att = global_context_att |
|
|
| |
| |
| if global_context_att: |
| self.linear1 = nn.Conv1d( |
| in_dim * 3, bottleneck_dim, |
| kernel_size=1) |
| else: |
| self.linear1 = nn.Conv1d( |
| in_dim, bottleneck_dim, |
| kernel_size=1) |
| self.linear2 = nn.Conv1d(bottleneck_dim, in_dim, |
| kernel_size=1) |
|
|
| def forward(self, x): |
| """ |
| x: a 3-dimensional tensor in tdnn-based architecture (B,F,T) |
| or a 4-dimensional tensor in resnet architecture (B,C,F,T) |
| 0-dim: batch-dimension, last-dim: time-dimension (frame-dimension) |
| """ |
| if len(x.shape) == 4: |
| x = x.reshape(x.shape[0], x.shape[1] * x.shape[2], x.shape[3]) |
| assert len(x.shape) == 3 |
|
|
| if self.global_context_att: |
| context_mean = torch.mean(x, dim=-1, keepdim=True).expand_as(x) |
| context_std = torch.sqrt( |
| torch.var(x, dim=-1, keepdim=True) + 1e-7).expand_as(x) |
| x_in = torch.cat((x, context_mean, context_std), dim=1) |
| else: |
| x_in = x |
|
|
| |
| alpha = torch.tanh( |
| self.linear1(x_in)) |
| alpha = torch.softmax(self.linear2(alpha), dim=2) |
| mean = torch.sum(alpha * x, dim=2) |
| var = torch.sum(alpha * (x**2), dim=2) - mean**2 |
| std = torch.sqrt(var.clamp(min=1e-7)) |
| return torch.cat([mean, std], dim=1) |
|
|
| def get_out_dim(self): |
| self.out_dim = 2 * self.in_dim |
| return self.out_dim |
|
|
|
|
| class MHASTP(torch.nn.Module): |
| """ Multi head attentive statistics pooling |
| Reference: |
| Self Multi-Head Attention for Speaker Recognition |
| https://arxiv.org/pdf/1906.09890.pdf |
| """ |
|
|
| def __init__(self, |
| in_dim, |
| layer_num=2, |
| head_num=2, |
| d_s=1, |
| bottleneck_dim=64, |
| **kwargs): |
| super(MHASTP, self).__init__() |
| assert (in_dim % head_num |
| ) == 0 |
| self.in_dim = in_dim |
| self.head_num = head_num |
| d_model = int(in_dim / head_num) |
| channel_dims = [bottleneck_dim for i in range(layer_num + 1)] |
| if d_s > 1: |
| d_s = d_model |
| else: |
| d_s = 1 |
| self.d_s = d_s |
| channel_dims[0], channel_dims[-1] = d_model, d_s |
| heads_att_trans = [] |
| for i in range(self.head_num): |
| att_trans = nn.Sequential() |
| for i in range(layer_num - 1): |
| att_trans.add_module( |
| 'att_' + str(i), |
| nn.Conv1d(channel_dims[i], channel_dims[i + 1], 1, 1)) |
| att_trans.add_module('tanh' + str(i), nn.Tanh()) |
| att_trans.add_module( |
| 'att_' + str(layer_num - 1), |
| nn.Conv1d(channel_dims[layer_num - 1], channel_dims[layer_num], |
| 1, 1)) |
| heads_att_trans.append(att_trans) |
| self.heads_att_trans = nn.ModuleList(heads_att_trans) |
|
|
| def forward(self, input): |
| """ |
| input: a 3-dimensional tensor in xvector architecture |
| or a 4-dimensional tensor in resnet architecture |
| 0-dim: batch-dimension, last-dim: time-dimension (frame-dimension) |
| """ |
| if len(input.shape) == 4: |
| input = input.reshape(input.shape[0], |
| input.shape[1] * input.shape[2], |
| input.shape[3]) |
| assert len(input.shape) == 3 |
| bs, f_dim, t_dim = input.shape |
| chunks = torch.chunk(input, self.head_num, 1) |
| |
| chunks_out = [] |
| |
| |
| for i, layer in enumerate(self.heads_att_trans): |
| att_score = layer(chunks[i]) |
| alpha = F.softmax(att_score, dim=-1) |
| mean = torch.sum(alpha * chunks[i], dim=2) |
| var = torch.sum(alpha * chunks[i]**2, dim=2) - mean**2 |
| std = torch.sqrt(var.clamp(min=1e-7)) |
| chunks_out.append(torch.cat((mean, std), dim=1)) |
| out = torch.cat(chunks_out, dim=1) |
| return out |
|
|
| def get_out_dim(self): |
| self.out_dim = 2 * self.in_dim |
| return self.out_dim |
|
|
|
|
| class MQMHASTP(torch.nn.Module): |
| """ An attentive pooling |
| Reference: |
| multi query multi head attentive statistics pooling |
| https://arxiv.org/pdf/2110.05042.pdf |
| Args: |
| in_dim: the feature dimension of input |
| layer_num: the number of layer in the pooling layer |
| query_num: the number of querys |
| head_num: the number of heads |
| bottleneck_dim: the bottleneck dimension |
| |
| SA (H = 1, Q = 1, n = 2, d_s = 1) ref: |
| https://www.danielpovey.com/files/2018_interspeech_xvector_attention.pdf |
| MHA (H > 1, Q = 1, n = 1, d_s = 1) ref: |
| https://arxiv.org/pdf/1906.09890.pdf |
| AS (H = 1, Q > 1, n = 2, d_s = 1) ref: |
| https://arxiv.org/pdf/1803.10963.pdf |
| VSA (H = 1, Q > 1, n = 2, d_s = d_h) ref: |
| http://www.interspeech2020.org/uploadfile/pdf/Mon-2-10-5.pdf |
| """ |
|
|
| def __init__(self, |
| in_dim, |
| layer_num=2, |
| query_num=2, |
| head_num=8, |
| d_s=2, |
| bottleneck_dim=64, |
| **kwargs): |
| super(MQMHASTP, self).__init__() |
| self.n_query = nn.ModuleList([ |
| MHASTP(in_dim, |
| layer_num=layer_num, |
| head_num=head_num, |
| d_s=d_s, |
| bottleneck_dim=bottleneck_dim) for i in range(query_num) |
| ]) |
| self.query_num = query_num |
| self.in_dim = in_dim |
|
|
| def forward(self, input): |
| """ |
| input: a 3-dimensional tensor in xvector architecture |
| or a 4-dimensional tensor in resnet architecture |
| 0-dim: batch-dimension, last-dim: time-dimension (frame-dimension) |
| """ |
| if len(input.shape) == 4: |
| input = input.reshape(input.shape[0], |
| input.shape[1] * input.shape[2], |
| input.shape[3]) |
| assert len(input.shape) == 3 |
| res = [] |
| for i, layer in enumerate(self.n_query): |
| res.append(layer(input)) |
| out = torch.cat(res, dim=-1) |
| return out |
|
|
| def get_out_dim(self): |
| self.out_dim = self.in_dim * 2 * self.query_num |
| return self.out_dim |
|
|
|
|
| if __name__ == '__main__': |
| data = torch.randn(16, 512, 10, 35) |
| |
| model = MQMHASTP(512 * 10) |
| model = MHASTP(512 * 10) |
| model = MQMHASTP(512 * 10, context=False) |
| print(model) |
|
|
| out = model(data) |
| print(out.shape) |
| print(model.get_out_dim()) |