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from vosk import Model, KaldiRecognizer # оффлайн-распознавание от Vosk | |
from vosk_tts import Model, Synth | |
import speech_recognition # распознавание пользовательской речи (Speech-To-Text) | |
import wave # создание и чтение аудиофайлов формата wav | |
import json # работа с json-файлами и json-строками | |
import os # работа с файловой системой | |
import requests | |
from pydub import AudioSegment | |
from pydub.playback import play | |
import urllib.request | |
PATH_TO_MODEL = "vosk-model-tts-ru-0.4-multi" | |
PATH_TO_OUTPUT = "C:/Users/user/Desktop/deepfake_sirius/materials/audio" #TODO: IT | |
k = "sk-YOVNQzHmpga9My3dwlSo9BQN907TuPZQXcHn50ztigTwm3I2" | |
files = [ | |
("input_face", open("C:\\Users\\user\\Desktop\\deepfake_sirius\\materials\\scale_1200.jpg", "rb")), #TODO: IT | |
("input_audio", open("C:\\Users\\user\\Desktop\\deepfake_sirius\\materials\\audio\\output.wav", "rb")), #TODO: IT | |
] | |
payload = {} | |
class VoiceGenerator: | |
def __init__(self): | |
self.model = Model(model_path=PATH_TO_MODEL) | |
def generate(self, text, file_name='output.wav'): | |
synth = Synth(self.model) | |
path = os.path.join(PATH_TO_OUTPUT, file_name) | |
synth.synth(text, path) | |
return path | |
def record_and_recognize_audio(file_path): | |
with speech_recognition.AudioFile(file_path) as source: | |
audio = recognizer.record(source) | |
try: | |
recognized_data = recognizer.recognize_google(audio, language="ru").lower() | |
except speech_recognition.UnknownValueError: | |
pass | |
except speech_recognition.RequestError: | |
pass | |
return recognized_data | |
def ask(request): | |
instruction = """ | |
Ответь на запрос так, как ответил бы на него Павел Воля. Используй данные из биографии Павла Воли, если это потребуется. Отвечай на запрос в его стиле. Ответ должен содержать не болеее 10 предложений. | |
""" | |
result = requests.post( | |
url='https://llm.api.cloud.yandex.net/llm/v1alpha/instruct', | |
headers={ | |
"Authorization": "Api-Key AQVNyVqBi-XoJ1cAo7VIxq6ztgXm3owqowtso5Qb", | |
}, | |
json={ | |
"model": "general", | |
"instruction_text": instruction, | |
"request_text": request, | |
"generation_options": { | |
"max_tokens": 1500, | |
"temperature": 0.5 | |
} | |
} | |
) | |
data = json.loads(result.text) | |
return(data['result']['alternatives'][0]['text']) | |
if __name__ == "__main__": | |
# инициализация инструментов распознавания и ввода речи | |
recognizer = speech_recognition.Recognizer() | |
vg = VoiceGenerator() | |
while True: | |
# старт записи речи с последующим выводом распознанной речи | |
# и удалением записанного в микрофон аудио | |
voice_input = record_and_recognize_audio() | |
os.remove("microphone-results.wav") | |
print(voice_input) | |
path_to_file = vg.generate(ask(voice_input)) | |
print(path_to_file) | |
response = requests.post( | |
"https://api.gooey.ai/v2/Lipsync/form/", | |
headers={ | |
"Authorization": "Bearer " + k, | |
}, | |
files=files, | |
data={"json": json.dumps(payload)}, | |
) | |
assert response.ok, response.content | |
#song = AudioSegment.from_wav(path_to_file) | |
result = response.json() | |
print(response.status_code, result["output"]["output_video"]) | |
#play(song) | |
urllib.request.urlretrieve(result["output"]["output_video"], "C:\\Users\\user\\Desktop\\deepfake_sirius\\materials\\video.mp4") | |
os.startfile("C:\\Users\\user\\Desktop\\deepfake_sirius\\materials\\video.mp4") | |
break; |