haoneng.lhn 3 سال پیش
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d0d8684b96
4فایلهای تغییر یافته به همراه81 افزوده شده و 43 حذف شده
  1. 57 30
      funasr/bin/asr_inference_paraformer_streaming.py
  2. 1 10
      funasr/models/e2e_asr_paraformer.py
  3. 12 1
      funasr/models/predictor/cif.py
  4. 11 2
      funasr/modules/embedding.py

+ 57 - 30
funasr/bin/asr_inference_paraformer_streaming.py

@@ -42,6 +42,7 @@ from funasr.utils import asr_utils, wav_utils, postprocess_utils
 from funasr.models.frontend.wav_frontend import WavFrontend
 from funasr.models.frontend.wav_frontend import WavFrontend
 from funasr.models.e2e_asr_paraformer import BiCifParaformer, ContextualParaformer
 from funasr.models.e2e_asr_paraformer import BiCifParaformer, ContextualParaformer
 from funasr.export.models.e2e_asr_paraformer import Paraformer as Paraformer_export
 from funasr.export.models.e2e_asr_paraformer import Paraformer as Paraformer_export
+np.set_printoptions(threshold=np.inf)
 
 
 class Speech2Text:
 class Speech2Text:
     """Speech2Text class
     """Speech2Text class
@@ -203,7 +204,6 @@ class Speech2Text:
         # Input as audio signal
         # Input as audio signal
         if isinstance(speech, np.ndarray):
         if isinstance(speech, np.ndarray):
             speech = torch.tensor(speech)
             speech = torch.tensor(speech)
-
         if self.frontend is not None:
         if self.frontend is not None:
             feats, feats_len = self.frontend.forward(speech, speech_lengths)
             feats, feats_len = self.frontend.forward(speech, speech_lengths)
             feats = to_device(feats, device=self.device)
             feats = to_device(feats, device=self.device)
@@ -213,13 +213,16 @@ class Speech2Text:
             feats = speech
             feats = speech
             feats_len = speech_lengths
             feats_len = speech_lengths
         lfr_factor = max(1, (feats.size()[-1] // 80) - 1)
         lfr_factor = max(1, (feats.size()[-1] // 80) - 1)
+        feats_len = cache["encoder"]["stride"] + cache["encoder"]["pad_left"] + cache["encoder"]["pad_right"]
+        feats = feats[:,cache["encoder"]["start_idx"]:cache["encoder"]["start_idx"]+feats_len,:]
+        feats_len = torch.tensor([feats_len])
         batch = {"speech": feats, "speech_lengths": feats_len, "cache": cache}
         batch = {"speech": feats, "speech_lengths": feats_len, "cache": cache}
 
 
         # a. To device
         # a. To device
         batch = to_device(batch, device=self.device)
         batch = to_device(batch, device=self.device)
 
 
         # b. Forward Encoder
         # b. Forward Encoder
-        enc, enc_len = self.asr_model.encode_chunk(**batch)
+        enc, enc_len = self.asr_model.encode_chunk(feats, feats_len, cache)
         if isinstance(enc, tuple):
         if isinstance(enc, tuple):
             enc = enc[0]
             enc = enc[0]
         # assert len(enc) == 1, len(enc)
         # assert len(enc) == 1, len(enc)
@@ -592,7 +595,6 @@ def inference_modelscope(
         if data_path_and_name_and_type is None and raw_inputs is not None:
         if data_path_and_name_and_type is None and raw_inputs is not None:
             if isinstance(raw_inputs, np.ndarray):
             if isinstance(raw_inputs, np.ndarray):
                 raw_inputs = torch.tensor(raw_inputs)
                 raw_inputs = torch.tensor(raw_inputs)
-
         is_final = False
         is_final = False
         if param_dict is not None and "cache" in param_dict:
         if param_dict is not None and "cache" in param_dict:
             cache = param_dict["cache"]
             cache = param_dict["cache"]
@@ -605,62 +607,87 @@ def inference_modelscope(
         asr_result = ""
         asr_result = ""
         wait = True
         wait = True
         if len(cache) == 0:
         if len(cache) == 0:
-            cache["encoder"] = {"start_idx": 0, "pad_left": 0, "stride": 10, "pad_right": 5, "cif_hidden": None, "cif_alphas": None}
+            cache["encoder"] = {"start_idx": 0, "pad_left": 0, "stride": 10, "pad_right": 5, "cif_hidden": None, "cif_alphas": None, "is_final": is_final, "left": 0, "right": 0}
             cache_de = {"decode_fsmn": None}
             cache_de = {"decode_fsmn": None}
             cache["decoder"] = cache_de
             cache["decoder"] = cache_de
             cache["first_chunk"] = True
             cache["first_chunk"] = True
             cache["speech"] = []
             cache["speech"] = []
-            cache["chunk_index"] = 0
-            cache["speech_chunk"] = []
+            cache["accum_speech"] = 0
 
 
         if raw_inputs is not None:
         if raw_inputs is not None:
             if len(cache["speech"]) == 0:
             if len(cache["speech"]) == 0:
                 cache["speech"] = raw_inputs
                 cache["speech"] = raw_inputs
             else:
             else:
                 cache["speech"] = torch.cat([cache["speech"], raw_inputs], dim=0)
                 cache["speech"] = torch.cat([cache["speech"], raw_inputs], dim=0)
-            if len(cache["speech_chunk"]) == 0:
-                cache["speech_chunk"] = raw_inputs
-            else:
-                cache["speech_chunk"] = torch.cat([cache["speech_chunk"], raw_inputs], dim=0)
-            while len(cache["speech_chunk"]) >= 960:
+            cache["accum_speech"] += len(raw_inputs)
+            while cache["accum_speech"] >= 960:
                 if cache["first_chunk"]:
                 if cache["first_chunk"]:
-                    if len(cache["speech_chunk"]) >= 14400:
-                        speech = torch.unsqueeze(cache["speech_chunk"][0:14400], axis=0)
-                        speech_length = torch.tensor([14400])
+                    if cache["accum_speech"] >= 14400:
+                        speech = torch.unsqueeze(cache["speech"], axis=0)
+                        speech_length = torch.tensor([len(cache["speech"])])
+                        cache["encoder"]["pad_left"] = 5 
+                        cache["encoder"]["pad_right"] = 5 
+                        cache["encoder"]["stride"] = 10
+                        cache["encoder"]["left"] = 5
+                        cache["encoder"]["right"] = 0
                         results = speech2text(cache, speech, speech_length)
                         results = speech2text(cache, speech, speech_length)
-                        cache["speech_chunk"]= cache["speech_chunk"][4800:]
+                        cache["accum_speech"] -= 4800
                         cache["first_chunk"] = False
                         cache["first_chunk"] = False
                         cache["encoder"]["start_idx"] = -5
                         cache["encoder"]["start_idx"] = -5
+                        cache["encoder"]["is_final"] = False
                         wait = False
                         wait = False
                     else:
                     else:
                         if is_final:
                         if is_final:
-                            cache["encoder"]["stride"] = len(cache["speech_chunk"]) // 960
+                            cache["encoder"]["stride"] = len(cache["speech"]) // 960
+                            cache["encoder"]["pad_left"] = 0
                             cache["encoder"]["pad_right"] = 0
                             cache["encoder"]["pad_right"] = 0
-                            speech = torch.unsqueeze(cache["speech_chunk"], axis=0)
-                            speech_length = torch.tensor([len(cache["speech_chunk"])])
+                            speech = torch.unsqueeze(cache["speech"], axis=0)
+                            speech_length = torch.tensor([len(cache["speech"])])
                             results = speech2text(cache, speech, speech_length)
                             results = speech2text(cache, speech, speech_length)
-                            cache["speech_chunk"] = []
+                            cache["accum_speech"] = 0
                             wait = False
                             wait = False
                         else:
                         else:
                             break
                             break
                 else:
                 else:
-                    if len(cache["speech_chunk"]) >= 19200:
+                    if cache["accum_speech"] >= 19200:
                         cache["encoder"]["start_idx"] += 10
                         cache["encoder"]["start_idx"] += 10
+                        cache["encoder"]["stride"] = 10
                         cache["encoder"]["pad_left"] = 5
                         cache["encoder"]["pad_left"] = 5
-                        speech = torch.unsqueeze(cache["speech_chunk"][:19200], axis=0)
-                        speech_length = torch.tensor([19200])
+                        cache["encoder"]["pad_right"] = 5
+                        cache["encoder"]["left"] = 0
+                        cache["encoder"]["right"] = 0
+                        speech = torch.unsqueeze(cache["speech"], axis=0)
+                        speech_length = torch.tensor([len(cache["speech"])])
                         results = speech2text(cache, speech, speech_length)
                         results = speech2text(cache, speech, speech_length)
-                        cache["speech_chunk"] = cache["speech_chunk"][9600:]
+                        cache["accum_speech"] -= 9600
                         wait = False
                         wait = False
                     else:
                     else:
                         if is_final:
                         if is_final:
-                            cache["encoder"]["stride"] = len(cache["speech_chunk"]) // 960
-                            cache["encoder"]["pad_right"] = 0
-                            speech = torch.unsqueeze(cache["speech_chunk"], axis=0)
-                            speech_length = torch.tensor([len(cache["speech_chunk"])])
-                            results = speech2text(cache, speech, speech_length)
-                            cache["speech_chunk"] = []
-                            wait = False
+                            cache["encoder"]["is_final"] = True
+                            if cache["accum_speech"] >= 14400:
+                                cache["encoder"]["start_idx"] += 10
+                                cache["encoder"]["stride"] = 10
+                                cache["encoder"]["pad_left"] = 5
+                                cache["encoder"]["pad_right"] = 5
+                                cache["encoder"]["left"] = 0
+                                cache["encoder"]["right"] = cache["accum_speech"] // 960 - 15
+                                speech = torch.unsqueeze(cache["speech"], axis=0)
+                                speech_length = torch.tensor([len(cache["speech"])])
+                                results = speech2text(cache, speech, speech_length)
+                                cache["accum_speech"] -= 9600
+                                wait = False
+                            else:
+                                cache["encoder"]["start_idx"] += 10
+                                cache["encoder"]["stride"] = cache["accum_speech"] // 960 - 5
+                                cache["encoder"]["pad_left"] = 5
+                                cache["encoder"]["pad_right"] = 0
+                                cache["encoder"]["left"] = 0
+                                cache["encoder"]["right"] = 0
+                                speech = torch.unsqueeze(cache["speech"], axis=0)
+                                speech_length = torch.tensor([len(cache["speech"])])
+                                results = speech2text(cache, speech, speech_length)
+                                cache["accum_speech"] = 0
+                                wait = False
                         else:
                         else:
                             break
                             break
                 
                 

+ 1 - 10
funasr/models/e2e_asr_paraformer.py

@@ -370,19 +370,10 @@ class Paraformer(AbsESPnetModel):
                 encoder_out, encoder_out_lens
                 encoder_out, encoder_out_lens
             )
             )
 
 
-        assert encoder_out.size(0) == speech.size(0), (
-            encoder_out.size(),
-            speech.size(0),
-        )
-        assert encoder_out.size(1) <= encoder_out_lens.max(), (
-            encoder_out.size(),
-            encoder_out_lens.max(),
-        )
-
         if intermediate_outs is not None:
         if intermediate_outs is not None:
             return (encoder_out, intermediate_outs), encoder_out_lens
             return (encoder_out, intermediate_outs), encoder_out_lens
 
 
-        return encoder_out, encoder_out_lens
+        return encoder_out, torch.tensor([encoder_out.size(1)])
 
 
     def calc_predictor(self, encoder_out, encoder_out_lens):
     def calc_predictor(self, encoder_out, encoder_out_lens):
 
 

+ 12 - 1
funasr/models/predictor/cif.py

@@ -200,6 +200,7 @@ class CifPredictorV2(nn.Module):
         return acoustic_embeds, token_num, alphas, cif_peak
         return acoustic_embeds, token_num, alphas, cif_peak
 
 
     def forward_chunk(self, hidden, cache=None):
     def forward_chunk(self, hidden, cache=None):
+        b, t, d = hidden.size()
         h = hidden
         h = hidden
         context = h.transpose(1, 2)
         context = h.transpose(1, 2)
         queries = self.pad(context)
         queries = self.pad(context)
@@ -220,11 +221,20 @@ class CifPredictorV2(nn.Module):
             alphas = alphas * mask_chunk_predictor
             alphas = alphas * mask_chunk_predictor
       
       
         if cache is not None:
         if cache is not None:
+            if cache["is_final"]:
+                alphas[:, cache["stride"] + cache["pad_left"] - 1] += 0.45
             if cache["cif_hidden"] is not None:
             if cache["cif_hidden"] is not None:
                 hidden = torch.cat((cache["cif_hidden"], hidden), 1)
                 hidden = torch.cat((cache["cif_hidden"], hidden), 1)
             if cache["cif_alphas"] is not None:
             if cache["cif_alphas"] is not None:
                 alphas = torch.cat((cache["cif_alphas"], alphas), -1)
                 alphas = torch.cat((cache["cif_alphas"], alphas), -1)
 
 
+        #if cache["is_final"]:
+        #    tail_threshold = torch.tensor([self.tail_threshold], dtype=alphas.dtype).to(alphas.device)
+        #    tail_threshold = torch.reshape(tail_threshold, (1, 1))
+        #    alphas = torch.cat([alphas, tail_threshold], dim=1)
+        #    zeros_hidden = torch.zeros((b, 1, d), dtype=hidden.dtype).to(hidden.device)
+        #    hidden = torch.cat([hidden, zeros_hidden], dim=1)
+
         token_num = alphas.sum(-1)
         token_num = alphas.sum(-1)
         acoustic_embeds, cif_peak = cif(hidden, alphas, self.threshold)
         acoustic_embeds, cif_peak = cif(hidden, alphas, self.threshold)
         len_time = alphas.size(-1)
         len_time = alphas.size(-1)
@@ -240,8 +250,9 @@ class CifPredictorV2(nn.Module):
                 pre_alphas_length = cache["cif_alphas"].size(-1)
                 pre_alphas_length = cache["cif_alphas"].size(-1)
                 mask_chunk_peak_predictor[:, :pre_alphas_length] = 1.0
                 mask_chunk_peak_predictor[:, :pre_alphas_length] = 1.0
             mask_chunk_peak_predictor[:, pre_alphas_length + cache["pad_left"]:pre_alphas_length + cache["stride"] + cache["pad_left"]] = 1.0
             mask_chunk_peak_predictor[:, pre_alphas_length + cache["pad_left"]:pre_alphas_length + cache["stride"] + cache["pad_left"]] = 1.0
+            #if cache["is_final"]:
+            #    mask_chunk_peak_predictor[:, -1] = 1.0
             
             
-
         if mask_chunk_peak_predictor is not None:
         if mask_chunk_peak_predictor is not None:
             cif_peak = cif_peak * mask_chunk_peak_predictor.squeeze(-1)
             cif_peak = cif_peak * mask_chunk_peak_predictor.squeeze(-1)
         
         

+ 11 - 2
funasr/modules/embedding.py

@@ -8,7 +8,7 @@
 
 
 import math
 import math
 import torch
 import torch
-
+import torch.nn.functional as F
 
 
 def _pre_hook(
 def _pre_hook(
     state_dict,
     state_dict,
@@ -409,9 +409,18 @@ class SinusoidalPositionEncoder(torch.nn.Module):
 
 
     def forward_chunk(self, x, cache=None):
     def forward_chunk(self, x, cache=None):
         start_idx = 0
         start_idx = 0
+        pad_left = 0
+        pad_right = 0
         batch_size, timesteps, input_dim = x.size()
         batch_size, timesteps, input_dim = x.size()
         if cache is not None:
         if cache is not None:
             start_idx = cache["start_idx"]
             start_idx = cache["start_idx"]
+            pad_left = cache["left"]
+            pad_right = cache["right"]
         positions = torch.arange(1, timesteps+start_idx+1)[None, :]
         positions = torch.arange(1, timesteps+start_idx+1)[None, :]
         position_encoding = self.encode(positions, input_dim, x.dtype).to(x.device)
         position_encoding = self.encode(positions, input_dim, x.dtype).to(x.device)
-        return x + position_encoding[:, start_idx: start_idx + timesteps]
+        outputs = x + position_encoding[:, start_idx: start_idx + timesteps]
+        outputs = outputs.transpose(1,2)
+        outputs = F.pad(outputs, (pad_left, pad_right))
+        outputs = outputs.transpose(1,2)
+        return outputs
+