// Copyright (c) 2024 Xiaomi Corporation import 'dart:io'; import 'package:args/args.dart'; import 'package:sherpa_onnx/sherpa_onnx.dart' as sherpa_onnx; import './init.dart'; void main(List arguments) async { await initSherpaOnnx(); final parser = ArgParser() ..addOption('model', help: 'Path to the NeMo CTC model') ..addOption('tokens', help: 'Path to tokens.txt') ..addOption('input-wav', help: 'Path to input.wav to transcribe'); final res = parser.parse(arguments); if (res['model'] == null || res['tokens'] == null || res['input-wav'] == null) { print(parser.usage); exit(1); } final model = res['model'] as String; final tokens = res['tokens'] as String; final inputWav = res['input-wav'] as String; final nemo = sherpa_onnx.OfflineNemoEncDecCtcModelConfig(model: model); final modelConfig = sherpa_onnx.OfflineModelConfig( nemoCtc: nemo, tokens: tokens, debug: true, numThreads: 1, ); final config = sherpa_onnx.OfflineRecognizerConfig(model: modelConfig); final recognizer = sherpa_onnx.OfflineRecognizer(config); final waveData = sherpa_onnx.readWave(inputWav); final stream = recognizer.createStream(); stream.acceptWaveform( samples: waveData.samples, sampleRate: waveData.sampleRate); recognizer.decode(stream); final result = recognizer.getResult(stream); print(result.text); stream.free(); recognizer.free(); }