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egs/tedlium/s5/local/nnet/run_lstm.sh
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#!/bin/bash # Copyright 2015 Brno University of Technology (Author: Karel Vesely) # Apache 2.0 # This example script trains a LSTM network on FBANK features. # The LSTM code comes from Yiayu DU, and Wei Li, thanks! . ./cmd.sh . ./path.sh dev=data-fbank/test train=data-fbank/train dev_original=data/test train_original=data/train gmm=exp/tri3 stage=0 . utils/parse_options.sh || exit 1; # Make the FBANK features [ ! -e $dev ] && if [ $stage -le 0 ]; then # Dev set utils/copy_data_dir.sh $dev_original $dev || exit 1; rm $dev/{cmvn,feats}.scp steps/make_fbank_pitch.sh --nj 10 --cmd "$train_cmd" \ $dev $dev/log $dev/data || exit 1; steps/compute_cmvn_stats.sh $dev $dev/log $dev/data || exit 1; # Training set utils/copy_data_dir.sh $train_original $train || exit 1; rm $train/{cmvn,feats}.scp steps/make_fbank_pitch.sh --nj 10 --cmd "$train_cmd --max-jobs-run 10" \ $train $train/log $train/data || exit 1; steps/compute_cmvn_stats.sh $train $train/log $train/data || exit 1; # Split the training set utils/subset_data_dir_tr_cv.sh --cv-spk-percent 10 $train ${train}_tr90 ${train}_cv10 fi if [ $stage -le 1 ]; then # Train the DNN optimizing per-frame cross-entropy. dir=exp/lstm4f ali=${gmm}_ali # Train $cuda_cmd $dir/log/train_nnet.log \ steps/nnet/train.sh --network-type lstm --learn-rate 0.00001 \ --cmvn-opts "--norm-means=true --norm-vars=true" --feat-type plain --splice 0 \ --proto-opts "--clip-gradient 5.0" \ --train-tool-opts "--momentum 0.9 --halving-factor 0.65" \ --train-tool "nnet-train-lstm-streams --num-stream=4 --targets-delay=5" \ ${train}_tr90 ${train}_cv10 data/lang $ali $ali $dir || exit 1; # Decode (reuse HCLG graph) steps/nnet/decode.sh --nj 11 --cmd "$decode_cmd" --config conf/decode_dnn.config --acwt 0.1 \ $gmm/graph $dev $dir/decode_test || exit 1; fi # TODO : sequence training, echo Success exit 0 # Getting results [see RESULTS file] # for x in exp/*/decode*; do [ -d $x ] && grep WER $x/wer_* | utils/best_wer.sh; done |