// sherpa-onnx/csrc/online-recognizer-transducer-impl.h // // Copyright (c) 2022-2023 Xiaomi Corporation #ifndef SHERPA_ONNX_CSRC_ONLINE_RECOGNIZER_TRANSDUCER_IMPL_H_ #define SHERPA_ONNX_CSRC_ONLINE_RECOGNIZER_TRANSDUCER_IMPL_H_ #include #include #include // NOLINT #include #include #include #if __ANDROID_API__ >= 9 #include #include "android/asset_manager.h" #include "android/asset_manager_jni.h" #endif #include "sherpa-onnx/csrc/file-utils.h" #include "sherpa-onnx/csrc/macros.h" #include "sherpa-onnx/csrc/online-lm.h" #include "sherpa-onnx/csrc/online-recognizer-impl.h" #include "sherpa-onnx/csrc/online-recognizer.h" #include "sherpa-onnx/csrc/online-transducer-decoder.h" #include "sherpa-onnx/csrc/online-transducer-greedy-search-decoder.h" #include "sherpa-onnx/csrc/online-transducer-model.h" #include "sherpa-onnx/csrc/online-transducer-modified-beam-search-decoder.h" #include "sherpa-onnx/csrc/symbol-table.h" #include "sherpa-onnx/csrc/utils.h" namespace sherpa_onnx { static OnlineRecognizerResult Convert(const OnlineTransducerDecoderResult &src, const SymbolTable &sym_table, float frame_shift_ms, int32_t subsampling_factor, int32_t segment, int32_t frames_since_start) { OnlineRecognizerResult r; r.tokens.reserve(src.tokens.size()); r.timestamps.reserve(src.tokens.size()); for (auto i : src.tokens) { auto sym = sym_table[i]; r.text.append(sym); r.tokens.push_back(std::move(sym)); } float frame_shift_s = frame_shift_ms / 1000. * subsampling_factor; for (auto t : src.timestamps) { float time = frame_shift_s * t; r.timestamps.push_back(time); } r.segment = segment; r.start_time = frames_since_start * frame_shift_ms / 1000.; return r; } class OnlineRecognizerTransducerImpl : public OnlineRecognizerImpl { public: explicit OnlineRecognizerTransducerImpl(const OnlineRecognizerConfig &config) : config_(config), model_(OnlineTransducerModel::Create(config.model_config)), sym_(config.model_config.tokens), endpoint_(config_.endpoint_config) { if (sym_.contains("")) { unk_id_ = sym_[""]; } if (config.decoding_method == "modified_beam_search") { if (!config_.hotwords_file.empty()) { InitHotwords(); } if (!config_.lm_config.model.empty()) { lm_ = OnlineLM::Create(config.lm_config); } decoder_ = std::make_unique( model_.get(), lm_.get(), config_.max_active_paths, config_.lm_config.scale, unk_id_); } else if (config.decoding_method == "greedy_search") { decoder_ = std::make_unique( model_.get(), unk_id_); } else { SHERPA_ONNX_LOGE("Unsupported decoding method: %s", config.decoding_method.c_str()); exit(-1); } } #if __ANDROID_API__ >= 9 explicit OnlineRecognizerTransducerImpl(AAssetManager *mgr, const OnlineRecognizerConfig &config) : config_(config), model_(OnlineTransducerModel::Create(mgr, config.model_config)), sym_(mgr, config.model_config.tokens), endpoint_(config_.endpoint_config) { if (sym_.contains("")) { unk_id_ = sym_[""]; } if (config.decoding_method == "modified_beam_search") { #if 0 // TODO(fangjun): Implement it if (!config_.lm_config.model.empty()) { lm_ = OnlineLM::Create(mgr, config.lm_config); } #endif if (!config_.hotwords_file.empty()) { InitHotwords(mgr); } decoder_ = std::make_unique( model_.get(), lm_.get(), config_.max_active_paths, config_.lm_config.scale, unk_id_); } else if (config.decoding_method == "greedy_search") { decoder_ = std::make_unique( model_.get(), unk_id_); } else { SHERPA_ONNX_LOGE("Unsupported decoding method: %s", config.decoding_method.c_str()); exit(-1); } } #endif std::unique_ptr CreateStream() const override { auto stream = std::make_unique(config_.feat_config, hotwords_graph_); InitOnlineStream(stream.get()); return stream; } std::unique_ptr CreateStream( const std::string &hotwords) const override { auto hws = std::regex_replace(hotwords, std::regex("/"), "\n"); std::istringstream is(hws); std::vector> current; if (!EncodeHotwords(is, sym_, ¤t)) { SHERPA_ONNX_LOGE("Encode hotwords failed, skipping, hotwords are : %s", hotwords.c_str()); } current.insert(current.end(), hotwords_.begin(), hotwords_.end()); auto context_graph = std::make_shared(current, config_.hotwords_score); auto stream = std::make_unique(config_.feat_config, context_graph); InitOnlineStream(stream.get()); return stream; } bool IsReady(OnlineStream *s) const override { return s->GetNumProcessedFrames() + model_->ChunkSize() < s->NumFramesReady(); } void DecodeStreams(OnlineStream **ss, int32_t n) const override { int32_t chunk_size = model_->ChunkSize(); int32_t chunk_shift = model_->ChunkShift(); int32_t feature_dim = ss[0]->FeatureDim(); std::vector results(n); std::vector features_vec(n * chunk_size * feature_dim); std::vector> states_vec(n); std::vector all_processed_frames(n); bool has_context_graph = false; for (int32_t i = 0; i != n; ++i) { if (!has_context_graph && ss[i]->GetContextGraph()) { has_context_graph = true; } const auto num_processed_frames = ss[i]->GetNumProcessedFrames(); std::vector features = ss[i]->GetFrames(num_processed_frames, chunk_size); // Question: should num_processed_frames include chunk_shift? ss[i]->GetNumProcessedFrames() += chunk_shift; std::copy(features.begin(), features.end(), features_vec.data() + i * chunk_size * feature_dim); results[i] = std::move(ss[i]->GetResult()); states_vec[i] = std::move(ss[i]->GetStates()); all_processed_frames[i] = num_processed_frames; } auto memory_info = Ort::MemoryInfo::CreateCpu(OrtDeviceAllocator, OrtMemTypeDefault); std::array x_shape{n, chunk_size, feature_dim}; Ort::Value x = Ort::Value::CreateTensor(memory_info, features_vec.data(), features_vec.size(), x_shape.data(), x_shape.size()); std::array processed_frames_shape{ static_cast(all_processed_frames.size())}; Ort::Value processed_frames = Ort::Value::CreateTensor( memory_info, all_processed_frames.data(), all_processed_frames.size(), processed_frames_shape.data(), processed_frames_shape.size()); auto states = model_->StackStates(states_vec); auto pair = model_->RunEncoder(std::move(x), std::move(states), std::move(processed_frames)); if (has_context_graph) { decoder_->Decode(std::move(pair.first), ss, &results); } else { decoder_->Decode(std::move(pair.first), &results); } std::vector> next_states = model_->UnStackStates(pair.second); for (int32_t i = 0; i != n; ++i) { ss[i]->SetResult(results[i]); ss[i]->SetStates(std::move(next_states[i])); } } OnlineRecognizerResult GetResult(OnlineStream *s) const override { OnlineTransducerDecoderResult decoder_result = s->GetResult(); decoder_->StripLeadingBlanks(&decoder_result); // TODO(fangjun): Remember to change these constants if needed int32_t frame_shift_ms = 10; int32_t subsampling_factor = 4; return Convert(decoder_result, sym_, frame_shift_ms, subsampling_factor, s->GetCurrentSegment(), s->GetNumFramesSinceStart()); } bool IsEndpoint(OnlineStream *s) const override { if (!config_.enable_endpoint) { return false; } int32_t num_processed_frames = s->GetNumProcessedFrames(); // frame shift is 10 milliseconds float frame_shift_in_seconds = 0.01; // subsampling factor is 4 int32_t trailing_silence_frames = s->GetResult().num_trailing_blanks * 4; return endpoint_.IsEndpoint(num_processed_frames, trailing_silence_frames, frame_shift_in_seconds); } void Reset(OnlineStream *s) const override { { // segment is incremented only when the last // result is not empty const auto &r = s->GetResult(); if (!r.tokens.empty() && r.tokens.back() != 0) { s->GetCurrentSegment() += 1; } } // we keep the decoder_out decoder_->UpdateDecoderOut(&s->GetResult()); Ort::Value decoder_out = std::move(s->GetResult().decoder_out); auto r = decoder_->GetEmptyResult(); if (config_.decoding_method == "modified_beam_search" && nullptr != s->GetContextGraph()) { for (auto it = r.hyps.begin(); it != r.hyps.end(); ++it) { it->second.context_state = s->GetContextGraph()->Root(); } } s->SetResult(r); s->GetResult().decoder_out = std::move(decoder_out); // Note: We only update counters. The underlying audio samples // are not discarded. s->Reset(); } private: void InitHotwords() { // each line in hotwords_file contains space-separated words std::ifstream is(config_.hotwords_file); if (!is) { SHERPA_ONNX_LOGE("Open hotwords file failed: %s", config_.hotwords_file.c_str()); exit(-1); } if (!EncodeHotwords(is, sym_, &hotwords_)) { SHERPA_ONNX_LOGE("Encode hotwords failed."); exit(-1); } hotwords_graph_ = std::make_shared(hotwords_, config_.hotwords_score); } #if __ANDROID_API__ >= 9 void InitHotwords(AAssetManager *mgr) { // each line in hotwords_file contains space-separated words auto buf = ReadFile(mgr, config_.hotwords_file); std::istrstream is(buf.data(), buf.size()); if (!is) { SHERPA_ONNX_LOGE("Open hotwords file failed: %s", config_.hotwords_file.c_str()); exit(-1); } if (!EncodeHotwords(is, sym_, &hotwords_)) { SHERPA_ONNX_LOGE("Encode hotwords failed."); exit(-1); } hotwords_graph_ = std::make_shared(hotwords_, config_.hotwords_score); } #endif void InitOnlineStream(OnlineStream *stream) const { auto r = decoder_->GetEmptyResult(); if (config_.decoding_method == "modified_beam_search" && nullptr != stream->GetContextGraph()) { // r.hyps has only one element. for (auto it = r.hyps.begin(); it != r.hyps.end(); ++it) { it->second.context_state = stream->GetContextGraph()->Root(); } } stream->SetResult(r); stream->SetStates(model_->GetEncoderInitStates()); } private: OnlineRecognizerConfig config_; std::vector> hotwords_; ContextGraphPtr hotwords_graph_; std::unique_ptr model_; std::unique_ptr lm_; std::unique_ptr decoder_; SymbolTable sym_; Endpoint endpoint_; int32_t unk_id_ = -1; }; } // namespace sherpa_onnx #endif // SHERPA_ONNX_CSRC_ONLINE_RECOGNIZER_TRANSDUCER_IMPL_H_