Add C++ support for streaming NeMo CTC models. (#857)
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@@ -12,9 +12,11 @@ from _sherpa_onnx import (
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from _sherpa_onnx import OnlineRecognizer as _Recognizer
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from _sherpa_onnx import (
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OnlineRecognizerConfig,
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OnlineRecognizerResult,
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OnlineStream,
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OnlineTransducerModelConfig,
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OnlineWenetCtcModelConfig,
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OnlineNeMoCtcModelConfig,
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OnlineZipformer2CtcModelConfig,
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OnlineCtcFstDecoderConfig,
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)
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@@ -59,6 +61,7 @@ class OnlineRecognizer(object):
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lm: str = "",
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lm_scale: float = 0.1,
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temperature_scale: float = 2.0,
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debug: bool = False,
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):
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"""
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Please refer to
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@@ -154,6 +157,7 @@ class OnlineRecognizer(object):
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num_threads=num_threads,
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provider=provider,
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model_type=model_type,
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debug=debug,
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)
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feat_config = FeatureExtractorConfig(
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@@ -220,6 +224,7 @@ class OnlineRecognizer(object):
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rule3_min_utterance_length: float = 20.0,
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decoding_method: str = "greedy_search",
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provider: str = "cpu",
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debug: bool = False,
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):
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"""
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Please refer to
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@@ -283,6 +288,7 @@ class OnlineRecognizer(object):
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num_threads=num_threads,
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provider=provider,
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model_type="paraformer",
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debug=debug,
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)
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feat_config = FeatureExtractorConfig(
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@@ -324,6 +330,7 @@ class OnlineRecognizer(object):
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ctc_graph: str = "",
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ctc_max_active: int = 3000,
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provider: str = "cpu",
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debug: bool = False,
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):
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"""
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Please refer to
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@@ -386,6 +393,7 @@ class OnlineRecognizer(object):
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tokens=tokens,
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num_threads=num_threads,
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provider=provider,
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debug=debug,
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)
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feat_config = FeatureExtractorConfig(
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@@ -417,6 +425,106 @@ class OnlineRecognizer(object):
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self.config = recognizer_config
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return self
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@classmethod
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def from_nemo_ctc(
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cls,
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tokens: str,
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model: str,
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num_threads: int = 2,
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sample_rate: float = 16000,
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feature_dim: int = 80,
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enable_endpoint_detection: bool = False,
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rule1_min_trailing_silence: float = 2.4,
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rule2_min_trailing_silence: float = 1.2,
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rule3_min_utterance_length: float = 20.0,
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decoding_method: str = "greedy_search",
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provider: str = "cpu",
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debug: bool = False,
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):
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"""
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Please refer to
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`<https://github.com/k2-fsa/sherpa-onnx/releases/tag/asr-models>`_
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to download pre-trained models.
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Args:
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tokens:
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Path to ``tokens.txt``. Each line in ``tokens.txt`` contains two
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columns::
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symbol integer_id
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model:
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Path to ``model.onnx``.
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num_threads:
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Number of threads for neural network computation.
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sample_rate:
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Sample rate of the training data used to train the model.
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feature_dim:
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Dimension of the feature used to train the model.
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enable_endpoint_detection:
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True to enable endpoint detection. False to disable endpoint
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detection.
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rule1_min_trailing_silence:
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Used only when enable_endpoint_detection is True. If the duration
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of trailing silence in seconds is larger than this value, we assume
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an endpoint is detected.
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rule2_min_trailing_silence:
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Used only when enable_endpoint_detection is True. If we have decoded
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something that is nonsilence and if the duration of trailing silence
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in seconds is larger than this value, we assume an endpoint is
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detected.
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rule3_min_utterance_length:
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Used only when enable_endpoint_detection is True. If the utterance
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length in seconds is larger than this value, we assume an endpoint
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is detected.
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decoding_method:
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The only valid value is greedy_search.
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provider:
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onnxruntime execution providers. Valid values are: cpu, cuda, coreml.
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debug:
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True to show meta data in the model.
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"""
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self = cls.__new__(cls)
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_assert_file_exists(tokens)
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_assert_file_exists(model)
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assert num_threads > 0, num_threads
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nemo_ctc_config = OnlineNeMoCtcModelConfig(
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model=model,
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)
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model_config = OnlineModelConfig(
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nemo_ctc=nemo_ctc_config,
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tokens=tokens,
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num_threads=num_threads,
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provider=provider,
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debug=debug,
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)
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feat_config = FeatureExtractorConfig(
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sampling_rate=sample_rate,
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feature_dim=feature_dim,
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)
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endpoint_config = EndpointConfig(
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rule1_min_trailing_silence=rule1_min_trailing_silence,
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rule2_min_trailing_silence=rule2_min_trailing_silence,
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rule3_min_utterance_length=rule3_min_utterance_length,
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)
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recognizer_config = OnlineRecognizerConfig(
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feat_config=feat_config,
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model_config=model_config,
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endpoint_config=endpoint_config,
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enable_endpoint=enable_endpoint_detection,
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decoding_method=decoding_method,
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)
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self.recognizer = _Recognizer(recognizer_config)
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self.config = recognizer_config
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return self
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@classmethod
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def from_wenet_ctc(
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cls,
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@@ -433,6 +541,7 @@ class OnlineRecognizer(object):
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rule3_min_utterance_length: float = 20.0,
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decoding_method: str = "greedy_search",
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provider: str = "cpu",
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debug: bool = False,
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):
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"""
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Please refer to
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@@ -497,6 +606,7 @@ class OnlineRecognizer(object):
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tokens=tokens,
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num_threads=num_threads,
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provider=provider,
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debug=debug,
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)
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feat_config = FeatureExtractorConfig(
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@@ -537,6 +647,9 @@ class OnlineRecognizer(object):
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def is_ready(self, s: OnlineStream) -> bool:
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return self.recognizer.is_ready(s)
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def get_result_all(self, s: OnlineStream) -> OnlineRecognizerResult:
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return self.recognizer.get_result(s)
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def get_result(self, s: OnlineStream) -> str:
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return self.recognizer.get_result(s).text.strip()
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