# -*- coding: utf-8 -*- import crepe import librosa import gradio as gr import pandas as pd from transformers import pipeline, RobertaTokenizerFast, TFRobertaForSequenceClassification asr = pipeline('automatic-speech-recognition', model='facebook/wav2vec2-large-960h-lv60-self') tokenizer = RobertaTokenizerFast.from_pretrained("arpanghoshal/EmoRoBERTa") model = TFRobertaForSequenceClassification.from_pretrained("arpanghoshal/EmoRoBERTa") emo = pipeline('sentiment-analysis', model='arpanghoshal/EmoRoBERTa') pos = pipeline("token-classification", model="vblagoje/bert-english-uncased-finetuned-pos") def transcribe_and_describe(audio): audio, sr = librosa.load(audio, sr=16000) text = asr(audio)['text'] tagged_text = pos(text) filler_words = [entry['word'] for entry in tagged_text if entry['entity'] == 'INTJ'] filler_word_pr = len(filler_words) / len(tagged_text) flatness = pd.DataFrame(librosa.feature.spectral_flatness(y=audio).T).describe().T loudness = pd.DataFrame(librosa.feature.rms(audio).T).describe().T time, frequency, confidence, activation = crepe.predict(audio, sr) frequency = pd.DataFrame(frequency.T).describe().T mean_spectral_flatness = flatness.loc[0, 'mean'] spectral_flatness_std = flatness.loc[0, 'std'] mean_pitch = frequency.loc[0, 'mean'] pitch_std = frequency.loc[0, 'std'] mean_volume = loudness.loc[0, 'mean'] volume_std = loudness.loc[0, 'std'] words_per_minute = len(text.split(" ")) / (librosa.get_duration(audio, sr) / 60) emotion = emo(text)[0]['label'] return (text, f"{filler_word_pr:.2f}", f"{words_per_minute:.2f}", f"{mean_pitch:.2f}", f"{pitch_std:.2f}", f"{mean_volume:.2f}", f"{volume_std:.2f}", f"{mean_spectral_flatness:.2f}", f"{spectral_flatness_std:.2f}", emotion) gr.Interface( fn=transcribe_and_describe, inputs=gr.Audio(source="microphone", type="filepath"), outputs=[ gr.Text(label="Transcription"), gr.Text(label="Filler Word Percent"), gr.Text(label="Rate of Speech (WPM)"), gr.Text(label="Mean Pitch (Hz)"), gr.Text(label="Pitch Variation (Hz)"), gr.Text(label="Mean Volume (W)"), gr.Text(label="Volume Variation (W)"), gr.Text(label="Mean Spectral Flatness (dB)"), gr.Text(label="Spectral Flatness Variation (dB)"), gr.Text(label="Emotion") ] ).launch()