import gradio as gr from transformers import pipeline transcription = pipeline("automatic-speech-recognition", model= "openai/whisper-base") clasification = pipeline( "audio-classification", model="anton-l/xtreme_s_xlsr_300m_minds14", ) def audio_a_text(audio): text = transcription(audio)["text"] return text def text_to_sentimient(audio): #text = transcription(audio)["text"] return clasification(audio) lang_id = { "Afrikaans": "af", "Amharic": "am", "Arabic": "ar", "Asturian": "ast", "Azerbaijani": "az", "Bashkir": "ba", "Belarusian": "be", "Bulgarian": "bg", "Bengali": "bn", "Breton": "br", "Bosnian": "bs", "Catalan": "ca", "Cebuano": "ceb", "Czech": "cs", "Welsh": "cy", "Danish": "da", "German": "de", "Greeek": "el", "English": "en", "Spanish": "es", "Estonian": "et", "Persian": "fa", "Fulah": "ff", "Finnish": "fi", "French": "fr", "Western Frisian": "fy", "Irish": "ga", "Gaelic": "gd", "Galician": "gl", "Gujarati": "gu", "Hausa": "ha", "Hebrew": "he", "Hindi": "hi", "Croatian": "hr", "Haitian": "ht", "Hungarian": "hu", "Armenian": "hy", "Indonesian": "id", "Igbo": "ig", "Iloko": "ilo", "Icelandic": "is", "Italian": "it", "Japanese": "ja", "Javanese": "jv", "Georgian": "ka", "Kazakh": "kk", "Central Khmer": "km", "Kannada": "kn", "Korean": "ko", "Luxembourgish": "lb", "Ganda": "lg", "Lingala": "ln", "Lao": "lo", "Lithuanian": "lt", "Latvian": "lv", "Malagasy": "mg", "Macedonian": "mk", "Malayalam": "ml", "Mongolian": "mn", "Marathi": "mr", "Malay": "ms", "Burmese": "my", "Nepali": "ne", "Dutch": "nl", "Norwegian": "no", "Northern Sotho": "ns", "Occitan": "oc", "Oriya": "or", "Panjabi": "pa", "Polish": "pl", "Pushto": "ps", "Portuguese": "pt", "Romanian": "ro", "Russian": "ru", "Sindhi": "sd", "Sinhala": "si", "Slovak": "sk", "Slovenian": "sl", "Somali": "so", "Albanian": "sq", "Serbian": "sr", "Swati": "ss", "Sundanese": "su", "Swedish": "sv", "Swahili": "sw", "Tamil": "ta", "Thai": "th", "Tagalog": "tl", "Tswana": "tn", "Turkish": "tr", "Ukrainian": "uk", "Urdu": "ur", "Uzbek": "uz", "Vietnamese": "vi", "Wolof": "wo", "Xhosa": "xh", "Yiddish": "yi", "Yoruba": "yo", "Chinese": "zh", "Zulu": "zu", } demo = gr.Blocks() with demo: gr.Markdown("Speech analyzer") audio = gr.Audio(type="filepath", label = "Upload a file") text = gr.Textbox() source_lang = gr.selectbox(label="Source language", options=list(lang_id.keys())) b1 = gr.Button("convert to text") b1.click(audio_a_text, inputs=audio, outputs=text) b2 = gr.Button("Classification of speech") b2.click(text_to_sentimient, inputs=audio, outputs=text) demo.launch()