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Python API for speaker diarization. (#1400)
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#!/usr/bin/env python3 | ||
# Copyright (c) 2024 Xiaomi Corporation | ||
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""" | ||
This file shows how to use sherpa-onnx Python API for | ||
offline/non-streaming speaker diarization. | ||
Usage: | ||
Step 1: Download a speaker segmentation model | ||
Please visit https://github.com/k2-fsa/sherpa-onnx/releases/tag/speaker-segmentation-models | ||
for a list of available models. The following is an example | ||
wget https://github.com/k2-fsa/sherpa-onnx/releases/download/speaker-segmentation-models/sherpa-onnx-pyannote-segmentation-3-0.tar.bz2 | ||
tar xvf sherpa-onnx-pyannote-segmentation-3-0.tar.bz2 | ||
rm sherpa-onnx-pyannote-segmentation-3-0.tar.bz2 | ||
Step 2: Download a speaker embedding extractor model | ||
Please visit https://github.com/k2-fsa/sherpa-onnx/releases/tag/speaker-recongition-models | ||
for a list of available models. The following is an example | ||
wget https://github.com/k2-fsa/sherpa-onnx/releases/download/speaker-recongition-models/3dspeaker_speech_eres2net_base_sv_zh-cn_3dspeaker_16k.onnx | ||
Step 3. Download test wave files | ||
Please visit https://github.com/k2-fsa/sherpa-onnx/releases/tag/speaker-segmentation-models | ||
for a list of available test wave files. The following is an example | ||
wget https://github.com/k2-fsa/sherpa-onnx/releases/download/speaker-segmentation-models/0-four-speakers-zh.wav | ||
Step 4. Run it | ||
python3 ./python-api-examples/offline-speaker-diarization.py | ||
""" | ||
from pathlib import Path | ||
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import sherpa_onnx | ||
import soundfile as sf | ||
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def init_speaker_diarization(num_speakers: int = -1, cluster_threshold: float = 0.5): | ||
""" | ||
Args: | ||
num_speakers: | ||
If you know the actual number of speakers in the wave file, then please | ||
specify it. Otherwise, leave it to -1 | ||
cluster_threshold: | ||
If num_speakers is -1, then this threshold is used for clustering. | ||
A smaller cluster_threshold leads to more clusters, i.e., more speakers. | ||
A larger cluster_threshold leads to fewer clusters, i.e., fewer speakers. | ||
""" | ||
segmentation_model = "./sherpa-onnx-pyannote-segmentation-3-0/model.onnx" | ||
embedding_extractor_model = ( | ||
"./3dspeaker_speech_eres2net_base_sv_zh-cn_3dspeaker_16k.onnx" | ||
) | ||
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config = sherpa_onnx.OfflineSpeakerDiarizationConfig( | ||
segmentation=sherpa_onnx.OfflineSpeakerSegmentationModelConfig( | ||
pyannote=sherpa_onnx.OfflineSpeakerSegmentationPyannoteModelConfig( | ||
model=segmentation_model | ||
), | ||
), | ||
embedding=sherpa_onnx.SpeakerEmbeddingExtractorConfig( | ||
model=embedding_extractor_model | ||
), | ||
clustering=sherpa_onnx.FastClusteringConfig( | ||
num_clusters=num_speakers, threshold=cluster_threshold | ||
), | ||
min_duration_on=0.3, | ||
min_duration_off=0.5, | ||
) | ||
if not config.validate(): | ||
raise RuntimeError( | ||
"Please check your config and make sure all required files exist" | ||
) | ||
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return sherpa_onnx.OfflineSpeakerDiarization(config) | ||
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def progress_callback(num_processed_chunk: int, num_total_chunks: int) -> int: | ||
progress = num_processed_chunk / num_total_chunks * 100 | ||
print(f"Progress: {progress:.3f}%") | ||
return 0 | ||
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def main(): | ||
wave_filename = "./0-four-speakers-zh.wav" | ||
if not Path(wave_filename).is_file(): | ||
raise RuntimeError(f"{wave_filename} does not exist") | ||
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audio, sample_rate = sf.read(wave_filename, dtype="float32", always_2d=True) | ||
audio = audio[:, 0] # only use the first channel | ||
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# Since we know there are 4 speakers in the above test wave file, we use | ||
# num_speakers 4 here | ||
sd = init_speaker_diarization(num_speakers=4) | ||
if sample_rate != sd.sample_rate: | ||
raise RuntimeError( | ||
f"Expected samples rate: {sd.sample_rate}, given: {sample_rate}" | ||
) | ||
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show_porgress = True | ||
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if show_porgress: | ||
result = sd.process(audio, callback=progress_callback).sort_by_start_time() | ||
else: | ||
result = sd.process(audio).sort_by_start_time() | ||
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for r in result: | ||
print(f"{r.start:.3f} -- {r.end:.3f} speaker_{r.speaker:02}") | ||
# print(r) # this one is simpler | ||
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if __name__ == "__main__": | ||
main() |
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sherpa-onnx/python/csrc/offline-speaker-diarization-result.cc
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// sherpa-onnx/python/csrc/offline-speaker-diarization-result.cc | ||
// | ||
// Copyright (c) 2024 Xiaomi Corporation | ||
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#include "sherpa-onnx/python/csrc/offline-speaker-diarization-result.h" | ||
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#include "sherpa-onnx/csrc/offline-speaker-diarization-result.h" | ||
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namespace sherpa_onnx { | ||
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static void PybindOfflineSpeakerDiarizationSegment(py::module *m) { | ||
using PyClass = OfflineSpeakerDiarizationSegment; | ||
py::class_<PyClass>(*m, "OfflineSpeakerDiarizationSegment") | ||
.def_property_readonly("start", &PyClass::Start) | ||
.def_property_readonly("end", &PyClass::End) | ||
.def_property_readonly("duration", &PyClass::Duration) | ||
.def_property_readonly("speaker", &PyClass::Speaker) | ||
.def_property("text", &PyClass::Text, &PyClass::SetText) | ||
.def("__str__", &PyClass::ToString); | ||
} | ||
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void PybindOfflineSpeakerDiarizationResult(py::module *m) { | ||
PybindOfflineSpeakerDiarizationSegment(m); | ||
using PyClass = OfflineSpeakerDiarizationResult; | ||
py::class_<PyClass>(*m, "OfflineSpeakerDiarizationResult") | ||
.def_property_readonly("num_speakers", &PyClass::NumSpeakers) | ||
.def_property_readonly("num_segments", &PyClass::NumSegments) | ||
.def("sort_by_start_time", &PyClass::SortByStartTime) | ||
.def("sort_by_speaker", &PyClass::SortBySpeaker); | ||
} | ||
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} // namespace sherpa_onnx |
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sherpa-onnx/python/csrc/offline-speaker-diarization-result.h
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// sherpa-onnx/python/csrc/offline-speaker-diarization-result.h | ||
// | ||
// Copyright (c) 2024 Xiaomi Corporation | ||
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#ifndef SHERPA_ONNX_PYTHON_CSRC_OFFLINE_SPEAKER_DIARIZATION_RESULT_H_ | ||
#define SHERPA_ONNX_PYTHON_CSRC_OFFLINE_SPEAKER_DIARIZATION_RESULT_H_ | ||
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#include "sherpa-onnx/python/csrc/sherpa-onnx.h" | ||
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namespace sherpa_onnx { | ||
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void PybindOfflineSpeakerDiarizationResult(py::module *m); | ||
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} | ||
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#endif // SHERPA_ONNX_PYTHON_CSRC_OFFLINE_SPEAKER_DIARIZATION_RESULT_H_ |
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// sherpa-onnx/python/csrc/offline-speaker-diarization.cc | ||
// | ||
// Copyright (c) 2024 Xiaomi Corporation | ||
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#include "sherpa-onnx/python/csrc/offline-speaker-diarization.h" | ||
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#include <string> | ||
#include <vector> | ||
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#include "sherpa-onnx/csrc/offline-speaker-diarization.h" | ||
#include "sherpa-onnx/csrc/offline-speaker-segmentation-model-config.h" | ||
#include "sherpa-onnx/csrc/offline-speaker-segmentation-pyannote-model-config.h" | ||
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namespace sherpa_onnx { | ||
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static void PybindOfflineSpeakerSegmentationPyannoteModelConfig(py::module *m) { | ||
using PyClass = OfflineSpeakerSegmentationPyannoteModelConfig; | ||
py::class_<PyClass>(*m, "OfflineSpeakerSegmentationPyannoteModelConfig") | ||
.def(py::init<>()) | ||
.def(py::init<const std::string &>(), py::arg("model")) | ||
.def_readwrite("model", &PyClass::model) | ||
.def("__str__", &PyClass::ToString) | ||
.def("validate", &PyClass::Validate); | ||
} | ||
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static void PybindOfflineSpeakerSegmentationModelConfig(py::module *m) { | ||
PybindOfflineSpeakerSegmentationPyannoteModelConfig(m); | ||
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using PyClass = OfflineSpeakerSegmentationModelConfig; | ||
py::class_<PyClass>(*m, "OfflineSpeakerSegmentationModelConfig") | ||
.def(py::init<>()) | ||
.def(py::init<const OfflineSpeakerSegmentationPyannoteModelConfig &, | ||
int32_t, bool, const std::string &>(), | ||
py::arg("pyannote"), py::arg("num_threads") = 1, | ||
py::arg("debug") = false, py::arg("provider") = "cpu") | ||
.def_readwrite("pyannote", &PyClass::pyannote) | ||
.def_readwrite("num_threads", &PyClass::num_threads) | ||
.def_readwrite("debug", &PyClass::debug) | ||
.def_readwrite("provider", &PyClass::provider) | ||
.def("__str__", &PyClass::ToString) | ||
.def("validate", &PyClass::Validate); | ||
} | ||
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static void PybindOfflineSpeakerDiarizationConfig(py::module *m) { | ||
PybindOfflineSpeakerSegmentationModelConfig(m); | ||
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using PyClass = OfflineSpeakerDiarizationConfig; | ||
py::class_<PyClass>(*m, "OfflineSpeakerDiarizationConfig") | ||
.def(py::init<const OfflineSpeakerSegmentationModelConfig &, | ||
const SpeakerEmbeddingExtractorConfig &, | ||
const FastClusteringConfig &, float, float>(), | ||
py::arg("segmentation"), py::arg("embedding"), py::arg("clustering"), | ||
py::arg("min_duration_on") = 0.3, py::arg("min_duration_off") = 0.5) | ||
.def_readwrite("segmentation", &PyClass::segmentation) | ||
.def_readwrite("embedding", &PyClass::embedding) | ||
.def_readwrite("clustering", &PyClass::clustering) | ||
.def_readwrite("min_duration_on", &PyClass::min_duration_on) | ||
.def_readwrite("min_duration_off", &PyClass::min_duration_off) | ||
.def("__str__", &PyClass::ToString) | ||
.def("validate", &PyClass::Validate); | ||
} | ||
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void PybindOfflineSpeakerDiarization(py::module *m) { | ||
PybindOfflineSpeakerDiarizationConfig(m); | ||
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using PyClass = OfflineSpeakerDiarization; | ||
py::class_<PyClass>(*m, "OfflineSpeakerDiarization") | ||
.def(py::init<const OfflineSpeakerDiarizationConfig &>(), | ||
py::arg("config")) | ||
.def_property_readonly("sample_rate", &PyClass::SampleRate) | ||
.def( | ||
"process", | ||
[](const PyClass &self, const std::vector<float> samples, | ||
std::function<int32_t(int32_t, int32_t)> callback) { | ||
if (!callback) { | ||
return self.Process(samples.data(), samples.size()); | ||
} | ||
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std::function<int32_t(int32_t, int32_t, void *)> callback_wrapper = | ||
[callback](int32_t processed_chunks, int32_t num_chunks, | ||
void *) -> int32_t { | ||
callback(processed_chunks, num_chunks); | ||
return 0; | ||
}; | ||
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return self.Process(samples.data(), samples.size(), | ||
callback_wrapper); | ||
}, | ||
py::arg("samples"), py::arg("callback") = py::none()); | ||
} | ||
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} // namespace sherpa_onnx |
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// sherpa-onnx/python/csrc/offline-speaker-diarization.h | ||
// | ||
// Copyright (c) 2024 Xiaomi Corporation | ||
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#ifndef SHERPA_ONNX_PYTHON_CSRC_OFFLINE_SPEAKER_DIARIZATION_H_ | ||
#define SHERPA_ONNX_PYTHON_CSRC_OFFLINE_SPEAKER_DIARIZATION_H_ | ||
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#include "sherpa-onnx/python/csrc/sherpa-onnx.h" | ||
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namespace sherpa_onnx { | ||
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void PybindOfflineSpeakerDiarization(py::module *m); | ||
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} | ||
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#endif // SHERPA_ONNX_PYTHON_CSRC_OFFLINE_SPEAKER_DIARIZATION_H_ |
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