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@@ -26,6 +26,13 @@ else:
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yield
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yield
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+def pad_attractor(att, max_n_speakers):
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+ C, D = att.shape
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+ if C < max_n_speakers:
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+ att = torch.cat([att, torch.zeros(max_n_speakers - C, D).to(torch.float32).to(att.device)], dim=0)
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+ return att
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+
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+
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class DiarEENDOLAModel(AbsESPnetModel):
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class DiarEENDOLAModel(AbsESPnetModel):
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"""CTC-attention hybrid Encoder-Decoder model"""
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"""CTC-attention hybrid Encoder-Decoder model"""
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@@ -53,6 +60,26 @@ class DiarEENDOLAModel(AbsESPnetModel):
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self.PostNet = nn.LSTM(self.max_n_speaker, n_units, 1, batch_first=True)
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self.PostNet = nn.LSTM(self.max_n_speaker, n_units, 1, batch_first=True)
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self.output_layer = nn.Linear(n_units, mapping_dict['oov'] + 1)
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self.output_layer = nn.Linear(n_units, mapping_dict['oov'] + 1)
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+ def forward_encoder(self, xs, ilens):
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+ xs = nn.utils.rnn.pad_sequence(xs, batch_first=True, padding_value=-1)
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+ pad_shape = xs.shape
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+ xs_mask = [torch.ones(ilen).to(xs.device) for ilen in ilens]
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+ xs_mask = torch.nn.utils.rnn.pad_sequence(xs_mask, batch_first=True, padding_value=0).unsqueeze(-2)
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+ emb = self.encoder(xs, xs_mask)
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+ emb = torch.split(emb.view(pad_shape[0], pad_shape[1], -1), 1, dim=0)
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+ emb = [e[0][:ilen] for e, ilen in zip(emb, ilens)]
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+ return emb
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+
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+ def forward_post_net(self, logits, ilens):
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+ maxlen = torch.max(ilens).to(torch.int).item()
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+ logits = nn.utils.rnn.pad_sequence(logits, batch_first=True, padding_value=-1)
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+ logits = nn.utils.rnn.pack_padded_sequence(logits, ilens, batch_first=True, enforce_sorted=False)
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+ outputs, (_, _) = self.PostNet(logits)
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+ outputs = nn.utils.rnn.pad_packed_sequence(outputs, batch_first=True, padding_value=-1, total_length=maxlen)[0]
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+ outputs = [output[:ilens[i].to(torch.int).item()] for i, output in enumerate(outputs)]
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+ outputs = [self.output_layer(output) for output in outputs]
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+ return outputs
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+
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def forward(
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def forward(
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self,
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self,
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speech: torch.Tensor,
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speech: torch.Tensor,
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@@ -156,51 +183,45 @@ class DiarEENDOLAModel(AbsESPnetModel):
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def estimate_sequential(self,
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def estimate_sequential(self,
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speech: torch.Tensor,
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speech: torch.Tensor,
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speech_lengths: torch.Tensor,
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speech_lengths: torch.Tensor,
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- n_speakers: int,
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- shuffle: bool,
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- threshold: float,
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+ n_speakers: int = None,
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+ shuffle: bool = True,
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+ threshold: float = 0.5,
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**kwargs):
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**kwargs):
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speech = [s[:s_len] for s, s_len in zip(speech, speech_lengths)]
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speech = [s[:s_len] for s, s_len in zip(speech, speech_lengths)]
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- emb = self.forward_core(speech) # list, [(T1, C1), ..., (T1, C1)]
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+ emb = self.forward_encoder(speech, speech_lengths)
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if shuffle:
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if shuffle:
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orders = [np.arange(e.shape[0]) for e in emb]
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orders = [np.arange(e.shape[0]) for e in emb]
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for order in orders:
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for order in orders:
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np.random.shuffle(order)
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np.random.shuffle(order)
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- # e[order]: shuffle后的embeddings, list, [(T1, C1), ..., (T1, C1)] 每个sample的T维度已进行随机顺序交换
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- # attractors, list, hts(论文里的as), [(max_n_speakers, n_units), ..., (max_n_speakers, n_units)]
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- # probs, list, [(max_n_speakers, ), ..., (max_n_speakers, ]
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attractors, probs = self.eda.estimate(
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attractors, probs = self.eda.estimate(
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- [e[torch.from_numpy(order).to(torch.long).to(xs[0].device)] for e, order in zip(emb, orders)])
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+ [e[torch.from_numpy(order).to(torch.long).to(speech[0].device)] for e, order in zip(emb, orders)])
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else:
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else:
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attractors, probs = self.eda.estimate(emb)
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attractors, probs = self.eda.estimate(emb)
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attractors_active = []
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attractors_active = []
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for p, att, e in zip(probs, attractors, emb):
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for p, att, e in zip(probs, attractors, emb):
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- if n_speakers and n_speakers >= 0: # 根据指定说话人数, 选择对应数量的ys
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- # TODO:在测试有不同数量speaker数的数据集时,考虑改成根据sample来确定具体的speaker数,而不是直接指定
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- # raise NotImplementedError
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+ if n_speakers and n_speakers >= 0:
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att = att[:n_speakers, ]
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att = att[:n_speakers, ]
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attractors_active.append(att)
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attractors_active.append(att)
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elif threshold is not None:
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elif threshold is not None:
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- silence = torch.nonzero(p < threshold)[0] # 找到第一个输出概率小于阈值的索引, 作为结束, 且值刚好等于说话人数
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+ silence = torch.nonzero(p < threshold)[0]
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n_spk = silence[0] if silence.size else None
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n_spk = silence[0] if silence.size else None
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att = att[:n_spk, ]
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att = att[:n_spk, ]
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attractors_active.append(att)
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attractors_active.append(att)
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else:
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else:
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- NotImplementedError('n_speakers or th has to be given.')
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- raw_n_speakers = [att.shape[0] for att in attractors_active] # [C1, C2, ..., CB]
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+ NotImplementedError('n_speakers or threshold has to be given.')
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+ raw_n_speakers = [att.shape[0] for att in attractors_active]
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attractors = [
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attractors = [
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pad_attractor(att, self.max_n_speaker) if att.shape[0] <= self.max_n_speaker else att[:self.max_n_speaker]
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pad_attractor(att, self.max_n_speaker) if att.shape[0] <= self.max_n_speaker else att[:self.max_n_speaker]
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for att in attractors_active]
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for att in attractors_active]
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ys = [torch.matmul(e, att.permute(1, 0)) for e, att in zip(emb, attractors)]
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ys = [torch.matmul(e, att.permute(1, 0)) for e, att in zip(emb, attractors)]
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- # ys_eda = [torch.sigmoid(y[:, :n_spk]) for y,n_spk in zip(ys, raw_n_speakers)]
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- logits = self.cal_postnet(ys, self.max_n_speaker)
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+ logits = self.forward_post_net(ys, speech_lengths)
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ys = [self.recover_y_from_powerlabel(logit, raw_n_speaker) for logit, raw_n_speaker in
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ys = [self.recover_y_from_powerlabel(logit, raw_n_speaker) for logit, raw_n_speaker in
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zip(logits, raw_n_speakers)]
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zip(logits, raw_n_speakers)]
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return ys, emb, attractors, raw_n_speakers
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return ys, emb, attractors, raw_n_speakers
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def recover_y_from_powerlabel(self, logit, n_speaker):
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def recover_y_from_powerlabel(self, logit, n_speaker):
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- pred = torch.argmax(torch.softmax(logit, dim=-1), dim=-1) # (T, )
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+ pred = torch.argmax(torch.softmax(logit, dim=-1), dim=-1)
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oov_index = torch.where(pred == self.mapping_dict['oov'])[0]
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oov_index = torch.where(pred == self.mapping_dict['oov'])[0]
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for i in oov_index:
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for i in oov_index:
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if i > 0:
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if i > 0:
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@@ -208,7 +229,6 @@ class DiarEENDOLAModel(AbsESPnetModel):
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else:
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else:
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pred[i] = 0
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pred[i] = 0
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pred = [self.reporter.inv_mapping_func(i, self.mapping_dict) for i in pred]
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pred = [self.reporter.inv_mapping_func(i, self.mapping_dict) for i in pred]
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- # print(pred)
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decisions = [bin(num)[2:].zfill(self.max_n_speaker)[::-1] for num in pred]
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decisions = [bin(num)[2:].zfill(self.max_n_speaker)[::-1] for num in pred]
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decisions = torch.from_numpy(
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decisions = torch.from_numpy(
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np.stack([np.array([int(i) for i in dec]) for dec in decisions], axis=0)).to(logit.device).to(
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np.stack([np.array([int(i) for i in dec]) for dec in decisions], axis=0)).to(logit.device).to(
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