package com.k2fsa.sherpa.onnx import android.content.res.AssetManager fun main() { var featConfig = FeatureConfig( sampleRate = 16000, featureDim = 80, ) // please refer to // https://k2-fsa.github.io/sherpa/onnx/pretrained_models/index.html // to dowload pre-trained models var modelConfig = OnlineModelConfig( transducer = OnlineTransducerModelConfig( encoder = "./sherpa-onnx-streaming-zipformer-en-2023-02-21/encoder-epoch-99-avg-1.onnx", decoder = "./sherpa-onnx-streaming-zipformer-en-2023-02-21/decoder-epoch-99-avg-1.onnx", joiner = "./sherpa-onnx-streaming-zipformer-en-2023-02-21/joiner-epoch-99-avg-1.onnx", ), tokens = "./sherpa-onnx-streaming-zipformer-en-2023-02-21/tokens.txt", numThreads = 1, debug = false, ) var endpointConfig = EndpointConfig() var lmConfig = OnlineLMConfig() var config = OnlineRecognizerConfig( modelConfig = modelConfig, lmConfig = lmConfig, featConfig = featConfig, endpointConfig = endpointConfig, enableEndpoint = true, decodingMethod = "greedy_search", maxActivePaths = 4, ) var model = SherpaOnnx( config = config, ) var objArray = WaveReader.readWaveFromFile( filename = "./sherpa-onnx-streaming-zipformer-en-2023-02-21/test_wavs/0.wav", ) var samples: FloatArray = objArray[0] as FloatArray var sampleRate: Int = objArray[1] as Int model.acceptWaveform(samples, sampleRate = sampleRate) while (model.isReady()) { model.decode() } var tailPaddings = FloatArray((sampleRate * 0.5).toInt()) // 0.5 seconds model.acceptWaveform(tailPaddings, sampleRate = sampleRate) model.inputFinished() while (model.isReady()) { model.decode() } println("results: ${model.text}") }