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import sys
import os
#replace the path with your hifigan path to import Generator from models.py
sys.path.append("hifigan")
import argparse
import torch
from espnet2.bin.tts_inference import Text2Speech
from models import Generator
from scipy.io.wavfile import write
from meldataset import MAX_WAV_VALUE
from env import AttrDict
import json
import yaml
import concurrent.futures
import numpy as np
import time
from text_preprocess_for_inference import TTSDurAlignPreprocessor, CharTextPreprocessor, TTSPreprocessor
SAMPLING_RATE = 48000
def load_hifigan_vocoder(language, gender, device):
# Load HiFi-GAN vocoder configuration file and generator model for the specified language and gender
vocoder_config = f"vocoder/{gender}/{language}/config.json"
vocoder_generator = f"vocoder/{gender}/{language}/generator"
# Read the contents of the vocoder configuration file
with open(vocoder_config, 'r') as f:
data = f.read()
json_config = json.loads(data)
h = AttrDict(json_config)
torch.manual_seed(h.seed)
# Move the generator model to the specified device (CPU or GPU)
device = torch.device(device)
generator = Generator(h).to(device)
state_dict_g = torch.load(vocoder_generator, device)
generator.load_state_dict(state_dict_g['generator'])
generator.eval()
generator.remove_weight_norm()
# Return the loaded and prepared HiFi-GAN generator model
return generator
def load_fastspeech2_model(language, gender, device):
#updating the config.yaml fiel based on language and gender
with open(f"{language}/{gender}/model/config.yaml", "r") as file:
config = yaml.safe_load(file)
current_working_directory = os.getcwd()
feat="model/feats_stats.npz"
pitch="model/pitch_stats.npz"
energy="model/energy_stats.npz"
feat_path=os.path.join(current_working_directory,language,gender,feat)
pitch_path=os.path.join(current_working_directory,language,gender,pitch)
energy_path=os.path.join(current_working_directory,language,gender,energy)
config["normalize_conf"]["stats_file"] = feat_path
config["pitch_normalize_conf"]["stats_file"] = pitch_path
config["energy_normalize_conf"]["stats_file"] = energy_path
with open(f"{language}/{gender}/model/config.yaml", "w") as file:
yaml.dump(config, file)
tts_model = f"{language}/{gender}/model/model.pth"
tts_config = f"{language}/{gender}/model/config.yaml"
return Text2Speech(train_config=tts_config, model_file=tts_model, device=device)
def text_synthesis(language, gender, sample_text, vocoder, MAX_WAV_VALUE, device, alpha):
# Perform Text-to-Speech synthesis
with torch.no_grad():
# Load the FastSpeech2 model for the specified language and gender
model = load_fastspeech2_model(language, gender, device)
# Generate mel-spectrograms from the input text using the FastSpeech2 model
out = model(sample_text, decode_conf={"alpha": alpha})
print("TTS Done")
x = out["feat_gen_denorm"].T.unsqueeze(0) * 2.3262
x = x.to(device)
# Use the HiFi-GAN vocoder to convert mel-spectrograms to raw audio waveforms
y_g_hat = vocoder(x)
audio = y_g_hat.squeeze()
audio = audio * MAX_WAV_VALUE
audio = audio.cpu().numpy().astype('int16')
# Return the synthesized audio
return audio
def split_into_chunks(text, words_per_chunk=100):
words = text.split()
chunks = [words[i:i + words_per_chunk] for i in range(0, len(words), words_per_chunk)]
return [' '.join(chunk) for chunk in chunks]
if __name__ == "__main__":
parser = argparse.ArgumentParser(description="Text-to-Speech Inference")
parser.add_argument("--language", type=str, required=True, help="Language (e.g., hindi)")
parser.add_argument("--gender", type=str, required=True, help="Gender (e.g., female)")
parser.add_argument("--sample_text", type=str, required=True, help="Text to be synthesized")
parser.add_argument("--output_file", type=str, default="", help="Output WAV file path")
parser.add_argument("--alpha", type=float, default=1, help="Alpha Parameter for speed control (e.g. 1.1 (slow) or 0.8 (fast))")
args = parser.parse_args()
phone_dictionary = {}
# Set the device
device = "cuda" if torch.cuda.is_available() else "cpu"
# Load the HiFi-GAN vocoder with dynamic language and gender
vocoder = load_hifigan_vocoder(args.language, args.gender, device)
if args.language == "urdu" or args.language == "punjabi":
preprocessor = CharTextPreprocessor()
elif args.language == "english":
preprocessor = TTSPreprocessor()
else:
preprocessor = TTSDurAlignPreprocessor()
start_time = time.time()
audio_arr = []
result = split_into_chunks(args.sample_text)
with concurrent.futures.ThreadPoolExecutor() as executor:
# Process each text sample concurrently
for sample_text in result:
# Preprocess the text and obtain a list of phrases
preprocessed_text, phrases = preprocessor.preprocess(sample_text, args.language, args.gender, phone_dictionary)
preprocessed_text = " ".join(preprocessed_text)
# Generate audio from the preprocessed text using a text-to-speech synthesis function
audio = text_synthesis(args.language, args.gender, preprocessed_text, vocoder, MAX_WAV_VALUE, device, args.alpha)
# Set the output file name
if args.output_file:
output_file = f"{args.output_file}"
else:
output_file = f"{args.language}_{args.gender}_output.wav"
# Append the generated audio to the list
audio_arr.append(audio)
result_array = np.concatenate(audio_arr, axis=0)
write(output_file, SAMPLING_RATE, result_array)