from svoice.separate import * import scipy.io as sio from scipy.io.wavfile import write import gradio as gr import os from transformers import AutoProcessor, pipeline from optimum.onnxruntime import ORTModelForSpeechSeq2Seq from glob import glob load_model() BASE_PATH = os.path.dirname(os.path.abspath(__file__)) os.makedirs('input', exist_ok=True) os.makedirs('separated', exist_ok=True) print("Loading ASR model...") processor = AutoProcessor.from_pretrained("openai/whisper-small") if not os.path.exists("whisper_checkpoint"): model = ORTModelForSpeechSeq2Seq.from_pretrained("openai/whisper-small", from_transformers=True) speech_recognition_pipeline = pipeline( "automatic-speech-recognition", model=model, feature_extractor=processor.feature_extractor, tokenizer=processor.tokenizer, ) os.makedirs('whisper_checkpoint', exist_ok=True) model.save_pretrained("whisper_checkpoint") else: model = ORTModelForSpeechSeq2Seq.from_pretrained("whisper_checkpoint", from_transformers=False) speech_recognition_pipeline = pipeline( "automatic-speech-recognition", model=model, feature_extractor=processor.feature_extractor, tokenizer=processor.tokenizer, ) print("Whisper ASR model loaded.") def separator(audio, rec_audio, example): outputs= {} for f in glob('input/*'): os.remove(f) for f in glob('separated/*'): os.remove(f) if audio: write('input/original.wav', audio[0], audio[1]) elif rec_audio: write('input/original.wav', rec_audio[0], rec_audio[1]) else: os.system(f'cp {example} input/original.wav') separate_demo(mix_dir="./input") separated_files = glob(os.path.join('separated', "*.wav")) separated_files = [f for f in separated_files if "original.wav" not in f] outputs['transcripts'] = [] for file in sorted(separated_files): separated_audio = sio.wavfile.read(file) outputs['transcripts'].append(speech_recognition_pipeline(separated_audio[1])['text']) return sorted(separated_files) + outputs['transcripts'] def set_example_audio(example: list) -> dict: return gr.Audio.update(value=example[0]) demo = gr.Blocks() with demo: gr.Markdown('''

Multiple Voice Separation with Transcription DEMO

This is a demo for the multiple voice separation algorithm. The algorithm is trained on the LibriMix7 dataset and can be used to separate multiple voices from a single audio file.

''') with gr.Row(): input_audio = gr.Audio(label="Input audio", type="numpy") rec_audio = gr.Audio(label="Record Using Microphone", type="numpy", source="microphone") with gr.Row(): output_audio1 = gr.Audio(label='Speaker 1', interactive=False) output_text1 = gr.Text(label='Speaker 1', interactive=False) output_audio2 = gr.Audio(label='Speaker 2', interactive=False) output_text2 = gr.Text(label='Speaker 2', interactive=False) with gr.Row(): output_audio3 = gr.Audio(label='Speaker 3', interactive=False) output_text3 = gr.Text(label='Speaker 3', interactive=False) output_audio4 = gr.Audio(label='Speaker 4', interactive=False) output_text4 = gr.Text(label='Speaker 4', interactive=False) with gr.Row(): output_audio5 = gr.Audio(label='Speaker 5', interactive=False) output_text5 = gr.Text(label='Speaker 5', interactive=False) output_audio6 = gr.Audio(label='Speaker 6', interactive=False) output_text6 = gr.Text(label='Speaker 6', interactive=False) with gr.Row(): output_audio7 = gr.Audio(label='Speaker 7', interactive=False) output_text7 = gr.Text(label='Speaker 7', interactive=False) outputs_audio = [output_audio1, output_audio2, output_audio3, output_audio4, output_audio5, output_audio6, output_audio7] outputs_text = [output_text1, output_text2, output_text3, output_text4, output_text5, output_text6, output_text7] button = gr.Button("Separate") examples = [ "samples/mixture1.wav", "samples/mixture2.wav", "samples/mixture3.wav" ] example_selector = gr.inputs.Dropdown(examples, label="Example Audio", default="samples/mixture1.wav") button.click(separator, inputs=[input_audio, rec_audio, example_selector], outputs=outputs_audio + outputs_text) demo.launch()