From 28a19dbc4e85d3b8a4ec2ef7483bba64d422b43f Mon Sep 17 00:00:00 2001
From: aky15 <ankeyu.aky@11.17.44.249>
Date: 星期三, 12 四月 2023 18:03:06 +0800
Subject: [PATCH] Merge remote-tracking branch 'origin/main' into dev_aky

---
 funasr/models/e2e_diar_sond.py |   33 +++++++++++++++++++++------------
 1 files changed, 21 insertions(+), 12 deletions(-)

diff --git a/funasr/models/e2e_diar_sond.py b/funasr/models/e2e_diar_sond.py
index e68d16b..de669f2 100644
--- a/funasr/models/e2e_diar_sond.py
+++ b/funasr/models/e2e_diar_sond.py
@@ -59,7 +59,8 @@
         normalize_speech_speaker: bool = False,
         ignore_id: int = -1,
         speaker_discrimination_loss_weight: float = 1.0,
-        inter_score_loss_weight: float = 0.0
+        inter_score_loss_weight: float = 0.0,
+        inputs_type: str = "raw",
     ):
         assert check_argument_types()
 
@@ -85,15 +86,13 @@
             normalize_length=length_normalized_loss,
         )
         self.criterion_bce = SequenceBinaryCrossEntropy(normalize_length=length_normalized_loss)
-        pse_embedding = self.generate_pse_embedding()
-        self.register_buffer("pse_embedding", pse_embedding)
-        power_weight = torch.from_numpy(2 ** np.arange(max_spk_num)[np.newaxis, np.newaxis, :]).float()
-        self.register_buffer("power_weight", power_weight)
-        int_token_arr = torch.from_numpy(np.array(self.token_list).astype(int)[np.newaxis, np.newaxis, :]).int()
-        self.register_buffer("int_token_arr", int_token_arr)
+        self.pse_embedding = self.generate_pse_embedding()
+        self.power_weight = torch.from_numpy(2 ** np.arange(max_spk_num)[np.newaxis, np.newaxis, :]).float()
+        self.int_token_arr = torch.from_numpy(np.array(self.token_list).astype(int)[np.newaxis, np.newaxis, :]).int()
         self.speaker_discrimination_loss_weight = speaker_discrimination_loss_weight
         self.inter_score_loss_weight = inter_score_loss_weight
         self.forward_steps = 0
+        self.inputs_type = inputs_type
 
     def generate_pse_embedding(self):
         embedding = np.zeros((len(self.token_list), self.max_spk_num), dtype=np.float)
@@ -125,9 +124,14 @@
             binary_labels: (Batch, frames, max_spk_num)
             binary_labels_lengths: (Batch,)
         """
-        assert speech.shape[0] == binary_labels.shape[0], (speech.shape, binary_labels.shape)
+        assert speech.shape[0] <= binary_labels.shape[0], (speech.shape, binary_labels.shape)
         batch_size = speech.shape[0]
         self.forward_steps = self.forward_steps + 1
+        if self.pse_embedding.device != speech.device:
+            self.pse_embedding = self.pse_embedding.to(speech.device)
+            self.power_weight = self.power_weight.to(speech.device)
+            self.int_token_arr = self.int_token_arr.to(speech.device)
+
         # 1. Network forward
         pred, inter_outputs = self.prediction_forward(
             speech, speech_lengths,
@@ -149,9 +153,13 @@
         # the sequence length of 'pred' might be slightly less than the
         # length of 'spk_labels'. Here we force them to be equal.
         length_diff_tolerance = 2
-        length_diff = pse_labels.shape[1] - pred.shape[1]
-        if 0 < length_diff <= length_diff_tolerance:
-            pse_labels = pse_labels[:, 0: pred.shape[1]]
+        length_diff = abs(pse_labels.shape[1] - pred.shape[1])
+        if length_diff <= length_diff_tolerance:
+            min_len = min(pred.shape[1], pse_labels.shape[1])
+            pse_labels = pse_labels[:, :min_len]
+            pred = pred[:, :min_len]
+            cd_score = cd_score[:, :min_len]
+            ci_score = ci_score[:, :min_len]
 
         loss_diar = self.classification_loss(pred, pse_labels, binary_labels_lengths)
         loss_spk_dis = self.speaker_discrimination_loss(profile, profile_lengths)
@@ -299,7 +307,7 @@
             speech: torch.Tensor,
             speech_lengths: torch.Tensor,
     ) -> Tuple[torch.Tensor, torch.Tensor]:
-        if self.encoder is not None:
+        if self.encoder is not None and self.inputs_type == "raw":
             speech, speech_lengths = self.encode(speech, speech_lengths)
             speech_mask = ~make_pad_mask(speech_lengths, maxlen=speech.shape[1])
             speech_mask = speech_mask.to(speech.device).unsqueeze(-1).float()
@@ -342,6 +350,7 @@
 
         if isinstance(self.ci_scorer, AbsEncoder):
             ci_simi = self.ci_scorer(ge_in, ge_len)[0]
+            ci_simi = torch.reshape(ci_simi, [bb, self.max_spk_num, tt]).permute([0, 2, 1])
         else:
             ci_simi = self.ci_scorer(speech_encoder_outputs, speaker_encoder_outputs)
 

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