# Copyright © 2020 Arm Ltd and Contributors. All rights reserved. # SPDX-License-Identifier: MIT """Automatic speech recognition with PyArmNN demo for processing audio clips to text.""" import sys import os from argparse import ArgumentParser script_dir = os.path.dirname(__file__) sys.path.insert(1, os.path.join(script_dir, '..', 'common')) from network_executor import ArmnnNetworkExecutor from utils import dict_labels from preprocess import MFCCParams, Preprocessor, MFCC from audio_capture import AudioCapture, ModelParams from audio_utils import decode_text, prepare_input_tensors, display_text def parse_args(): parser = ArgumentParser(description="ASR with PyArmNN") parser.add_argument( "--audio_file_path", required=True, type=str, help="Path to the audio file to perform ASR", ) parser.add_argument( "--model_file_path", required=True, type=str, help="Path to ASR model to use", ) parser.add_argument( "--labels_file_path", required=True, type=str, help="Path to text file containing labels to map to model output", ) parser.add_argument( "--preferred_backends", type=str, nargs="+", default=["CpuAcc", "CpuRef"], help="""List of backends in order of preference for optimizing subgraphs, falling back to the next backend in the list on unsupported layers. Defaults to [CpuAcc, CpuRef]""", ) return parser.parse_args() def main(args): # Read command line args audio_file = args.audio_file_path model = ModelParams(args.model_file_path) labels = dict_labels(args.labels_file_path) # Create the ArmNN inference runner network = ArmnnNetworkExecutor(model.path, args.preferred_backends) audio_capture = AudioCapture(model) buffer = audio_capture.from_audio_file(audio_file) # Create the preprocessor mfcc_params = MFCCParams(sampling_freq=16000, num_fbank_bins=128, mel_lo_freq=0, mel_hi_freq=8000, num_mfcc_feats=13, frame_len=512, use_htk_method=False, n_FFT=512) mfcc = MFCC(mfcc_params) preprocessor = Preprocessor(mfcc, model_input_size=296, stride=160) text = "" current_r_context = "" is_first_window = True print("Processing Audio Frames...") for audio_data in buffer: # Prepare the input Tensors input_tensors = prepare_input_tensors(audio_data, network.input_binding_info, preprocessor) # Run inference output_result = network.run(input_tensors) # Slice and Decode the text, and store the right context current_r_context, text = decode_text(is_first_window, labels, output_result) is_first_window = False display_text(text) print(current_r_context, flush=True) if __name__ == "__main__": args = parse_args() main(args)