import torch import torchaudio import gradio as gr from sgmse.model import ScoreModel from sgmse.util.other import pad_spec import time # Import the time module import os # Define parameters based on the configuration in enhancement.py args = { "test_dir": "./test_data", # example directory, adjust as needed "enhanced_dir": "./enhanced_data", # example directory, adjust as needed "ckpt": "https://huggingface.co/sp-uhh/speech-enhancement-sgmse/resolve/main/train_vb_29nqe0uh_epoch%3D115.ckpt", "corrector": "ald", "corrector_steps": 1, "snr": 0.5, "N": 30, "device": "cuda" if torch.cuda.is_available() else "cpu" } # Ensure the model is loaded to the correct device model = ScoreModel.load_from_checkpoint(args["ckpt"]).to(args["device"]) def enhance_speech(audio_file): start_time = time.time() # Start the timer # Load and process the audio file y, sr = torchaudio.load(audio_file) # Gradio passes the file path print(f"Loaded audio in {time.time() - start_time:.2f}s") T_orig = y.size(1) # Normalize norm_factor = y.abs().max() y = y / norm_factor # Prepare DNN input Y = torch.unsqueeze(model._forward_transform(model._stft(y.to(args["device"]))), 0) print(f"Transformed input in {time.time() - start_time:.2f}s") Y = pad_spec(Y, mode="zero_pad") # Use "zero_pad" mode for padding # Reverse sampling sampler = model.get_pc_sampler( 'reverse_diffusion', args["corrector"], Y.to(args["device"]), N=args["N"], corrector_steps=args["corrector_steps"], snr=args["snr"] ) sample, _ = sampler() # Backward transform in time domain x_hat = model.to_audio(sample.squeeze(), T_orig) # Renormalize x_hat = x_hat * norm_factor # Create a temporary path for saving the enhanced audio in Hugging Face Space output_file = "/tmp/enhanced_output.wav" # Use a temporary directory torchaudio.save(output_file, x_hat.cpu(), sr) print(f"Processed audio in {time.time() - start_time:.2f}s") # Return the path to the enhanced file for Gradio to handle return output_file # Gradio interface setup inputs = gr.Audio(label="Input Audio", type="filepath") # Adjusted to 'filepath' outputs = gr.Audio(label="Enhanced Audio", type="filepath") # Output as filepath title = "Speech Enhancement using SGMSE" description = "This Gradio demo uses the SGMSE model for speech enhancement. Upload your audio file to enhance it." article = "

Model Card

" # Launch the Gradio interface gr.Interface(fn=enhance_speech, inputs=inputs, outputs=outputs, title=title, description=description, article=article).launch()