run_tdnn_lstm_1a.sh
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#!/bin/bash
# Copyright 2017 University of Chinese Academy of Sciences (UCAS) Gaofeng Cheng
# Apache 2.0
# Same as run_tdnn_opgru_1a.sh, but replacing Norm-OPGRU with LSTMP.
# Also Batchnorm in TDNN layers does not reduce the WER in Fisher+SWBD, so in run_tdnn_lstm_1a.sh,
# I just apply renorm component in TDNN layers.
# ./local/chain/compare_wer_general.sh --looped tdnn_lstm_1a_sp
# System tdnn_lstm_1a_sp
# num-params 39.7M
# WER on eval2000(tg) 12.3
# [looped:] 12.2
# WER on eval2000(fg) 12.1
# [looped:] 12.1
# WER on rt03(tg) 11.6
# [looped:] 11.6
# WER on rt03(fg) 11.3
# [looped:] 11.3
# Final train prob -0.074
# Final valid prob -0.084
# Final train prob (xent) -0.882
# Final valid prob (xent) -0.9393
# ./steps/info/chain_dir_info.pl exp/chain/tdnn_lstm_1a_sp
#exp/chain/tdnn_lstm_1a_sp: num-iters=2384 nj=3..16 num-params=39.7M dim=40+100->6149 combine=-0.097->-0.086
#xent:train/valid[1587,2383,final]=(-0.949,-0.898,-0.882/-0.998,-0.949,-0.939)
#logprob:train/valid[1587,2383,final]=(-0.079,-0.075,-0.074/-0.087,-0.082,-0.084)
# ./show_chain_wer.sh tdnn_lstm_1a_sp
# %WER 16.0 | 2628 21594 | 86.3 9.0 4.7 2.3 16.0 54.4 | exp/chain/tdnn_lstm_1a_sp/decode_eval2000_fsh_sw1_tg/score_7_0.0/eval2000_hires.ctm.callhm.filt.sys
# %WER 12.3 | 4459 42989 | 89.4 7.1 3.5 1.7 12.3 49.8 | exp/chain/tdnn_lstm_1a_sp/decode_eval2000_fsh_sw1_tg/score_8_0.0/eval2000_hires.ctm.filt.sys
# %WER 8.4 | 1831 21395 | 92.7 5.1 2.2 1.1 8.4 42.3 | exp/chain/tdnn_lstm_1a_sp/decode_eval2000_fsh_sw1_tg/score_10_0.0/eval2000_hires.ctm.swbd.filt.sys
# %WER 15.9 | 2628 21594 | 86.4 8.9 4.7 2.3 15.9 54.3 | exp/chain/tdnn_lstm_1a_sp/decode_eval2000_fsh_sw1_fg/score_7_0.0/eval2000_hires.ctm.callhm.filt.sys
# %WER 12.1 | 4459 42989 | 89.6 6.9 3.5 1.7 12.1 49.2 | exp/chain/tdnn_lstm_1a_sp/decode_eval2000_fsh_sw1_fg/score_8_0.0/eval2000_hires.ctm.filt.sys
# %WER 8.2 | 1831 21395 | 93.1 5.1 1.8 1.3 8.2 41.7 | exp/chain/tdnn_lstm_1a_sp/decode_eval2000_fsh_sw1_fg/score_8_0.0/eval2000_hires.ctm.swbd.filt.sys
# ./show_chain_wer_rt03.sh tdnn_lstm_1a_sp
# %WER 9.6 | 3970 36721 | 91.5 5.5 3.0 1.1 9.6 41.2 | exp/chain/tdnn_lstm_1a_sp/decode_rt03_fsh_sw1_tg/score_7_0.0/rt03_hires.ctm.fsh.filt.sys
# %WER 11.6 | 8420 76157 | 89.7 6.8 3.4 1.4 11.6 43.0 | exp/chain/tdnn_lstm_1a_sp/decode_rt03_fsh_sw1_tg/score_7_0.0/rt03_hires.ctm.filt.sys
# %WER 13.3 | 4450 39436 | 88.0 7.4 4.6 1.3 13.3 44.5 | exp/chain/tdnn_lstm_1a_sp/decode_rt03_fsh_sw1_tg/score_9_0.0/rt03_hires.ctm.swbd.filt.sys
# %WER 9.4 | 3970 36721 | 91.8 5.3 2.9 1.1 9.4 40.3 | exp/chain/tdnn_lstm_1a_sp/decode_rt03_fsh_sw1_fg/score_7_0.0/rt03_hires.ctm.fsh.filt.sys
# %WER 11.3 | 8420 76157 | 89.9 6.4 3.7 1.2 11.3 42.4 | exp/chain/tdnn_lstm_1a_sp/decode_rt03_fsh_sw1_fg/score_8_0.0/rt03_hires.ctm.filt.sys
# %WER 13.1 | 4450 39436 | 88.3 7.5 4.2 1.4 13.1 44.0 | exp/chain/tdnn_lstm_1a_sp/decode_rt03_fsh_sw1_fg/score_8_0.0/rt03_hires.ctm.swbd.filt.sys
set -e
# configs for 'chain'
stage=12
train_stage=-10
get_egs_stage=-10
speed_perturb=true
dir=exp/chain/tdnn_lstm_1a # Note: _sp will get added to this if $speed_perturb == true.
decode_iter=
decode_dir_affix=
# training options
leftmost_questions_truncate=-1
chunk_width=150
chunk_left_context=40
chunk_right_context=0
xent_regularize=0.025
self_repair_scale=0.00001
label_delay=5
# decode options
extra_left_context=50
extra_right_context=0
frames_per_chunk=
remove_egs=false
common_egs_dir=
affix=
# End configuration section.
echo "$0 $@" # Print the command line for logging
. ./cmd.sh
. ./path.sh
. ./utils/parse_options.sh
if ! cuda-compiled; then
cat <<EOF && exit 1
This script is intended to be used with GPUs but you have not compiled Kaldi with CUDA
If you want to use GPUs (and have them), go to src/, and configure and make on a machine
where "nvcc" is installed.
EOF
fi
# The iVector-extraction and feature-dumping parts are the same as the standard
# nnet3 setup, and you can skip them by setting "--stage 8" if you have already
# run those things.
suffix=
if [ "$speed_perturb" == "true" ]; then
suffix=_sp
fi
dir=${dir}$suffix
build_tree_train_set=train_nodup
train_set=train_nodup_sp
build_tree_ali_dir=exp/tri5a_ali
treedir=exp/chain/tri6_tree
lang=data/lang_chain
# if we are using the speed-perturbed data we need to generate
# alignments for it.
local/nnet3/run_ivector_common.sh --stage $stage \
--speed-perturb $speed_perturb \
--generate-alignments $speed_perturb || exit 1;
if [ $stage -le 9 ]; then
# Get the alignments as lattices (gives the CTC training more freedom).
# use the same num-jobs as the alignments
nj=$(cat $build_tree_ali_dir/num_jobs) || exit 1;
steps/align_fmllr_lats.sh --nj $nj --cmd "$train_cmd" data/$train_set \
data/lang exp/tri5a exp/tri5a_lats_nodup$suffix
rm exp/tri5a_lats_nodup$suffix/fsts.*.gz # save space
fi
if [ $stage -le 10 ]; then
# Create a version of the lang/ directory that has one state per phone in the
# topo file. [note, it really has two states.. the first one is only repeated
# once, the second one has zero or more repeats.]
rm -rf $lang
cp -r data/lang $lang
silphonelist=$(cat $lang/phones/silence.csl) || exit 1;
nonsilphonelist=$(cat $lang/phones/nonsilence.csl) || exit 1;
# Use our special topology... note that later on may have to tune this
# topology.
steps/nnet3/chain/gen_topo.py $nonsilphonelist $silphonelist >$lang/topo
fi
if [ $stage -le 11 ]; then
# Build a tree using our new topology.
steps/nnet3/chain/build_tree.sh --frame-subsampling-factor 3 \
--leftmost-questions-truncate $leftmost_questions_truncate \
--context-opts "--context-width=2 --central-position=1" \
--cmd "$train_cmd" 11000 data/$build_tree_train_set $lang $build_tree_ali_dir $treedir
fi
if [ $stage -le 12 ]; then
echo "$0: creating neural net configs using the xconfig parser";
num_targets=$(tree-info $treedir/tree |grep num-pdfs|awk '{print $2}')
learning_rate_factor=$(echo "print (0.5/$xent_regularize)" | python)
lstm_opts="decay-time=20"
mkdir -p $dir/configs
cat <<EOF > $dir/configs/network.xconfig
input dim=100 name=ivector
input dim=40 name=input
# please note that it is important to have input layer with the name=input
# as the layer immediately preceding the fixed-affine-layer to enable
# the use of short notation for the descriptor
fixed-affine-layer name=lda input=Append(-2,-1,0,1,2, ReplaceIndex(ivector, t, 0)) affine-transform-file=$dir/configs/lda.mat
# the first splicing is moved before the lda layer, so no splicing here
relu-renorm-layer name=tdnn1 dim=1024
relu-renorm-layer name=tdnn2 input=Append(-1,0,1) dim=1024
relu-renorm-layer name=tdnn3 input=Append(-1,0,1) dim=1024
# check steps/libs/nnet3/xconfig/lstm.py for the other options and defaults
lstmp-layer name=lstm1 cell-dim=1024 recurrent-projection-dim=256 non-recurrent-projection-dim=256 delay=-3 $lstm_opts
relu-renorm-layer name=tdnn4 input=Append(-3,0,3) dim=1024
relu-renorm-layer name=tdnn5 input=Append(-3,0,3) dim=1024
lstmp-layer name=lstm2 cell-dim=1024 recurrent-projection-dim=256 non-recurrent-projection-dim=256 delay=-3 $lstm_opts
relu-renorm-layer name=tdnn6 input=Append(-3,0,3) dim=1024
relu-renorm-layer name=tdnn7 input=Append(-3,0,3) dim=1024
lstmp-layer name=lstm3 cell-dim=1024 recurrent-projection-dim=256 non-recurrent-projection-dim=256 delay=-3 $lstm_opts
## adding the layers for chain branch
output-layer name=output input=lstm3 output-delay=$label_delay include-log-softmax=false dim=$num_targets max-change=1.5
# adding the layers for xent branch
# This block prints the configs for a separate output that will be
# trained with a cross-entropy objective in the 'chain' models... this
# has the effect of regularizing the hidden parts of the model. we use
# 0.5 / args.xent_regularize as the learning rate factor- the factor of
# 0.5 / args.xent_regularize is suitable as it means the xent
# final-layer learns at a rate independent of the regularization
# constant; and the 0.5 was tuned so as to make the relative progress
# similar in the xent and regular final layers.
output-layer name=output-xent input=lstm3 output-delay=$label_delay dim=$num_targets learning-rate-factor=$learning_rate_factor max-change=1.5
EOF
steps/nnet3/xconfig_to_configs.py --xconfig-file $dir/configs/network.xconfig --config-dir $dir/configs/
fi
if [ $stage -le 13 ]; then
if [[ $(hostname -f) == *.clsp.jhu.edu ]] && [ ! -d $dir/egs/storage ]; then
utils/create_split_dir.pl \
/export/b0{5,6,7,8}/$USER/kaldi-data/egs/swbd-$(date +'%m_%d_%H_%M')/s5c/$dir/egs/storage $dir/egs/storage
fi
steps/nnet3/chain/train.py --stage $train_stage \
--cmd "$decode_cmd" \
--feat.online-ivector-dir exp/nnet3/ivectors_${train_set} \
--feat.cmvn-opts "--norm-means=false --norm-vars=false" \
--chain.xent-regularize $xent_regularize \
--chain.leaky-hmm-coefficient 0.1 \
--chain.l2-regularize 0.00005 \
--chain.apply-deriv-weights false \
--chain.lm-opts="--num-extra-lm-states=2000" \
--trainer.num-chunk-per-minibatch 64 \
--trainer.frames-per-iter 1200000 \
--trainer.max-param-change 2.0 \
--trainer.num-epochs 4 \
--trainer.optimization.shrink-value 0.99 \
--trainer.optimization.num-jobs-initial 3 \
--trainer.optimization.num-jobs-final 16 \
--trainer.optimization.initial-effective-lrate 0.001 \
--trainer.optimization.final-effective-lrate 0.0001 \
--trainer.optimization.momentum 0.0 \
--trainer.deriv-truncate-margin 8 \
--egs.stage $get_egs_stage \
--egs.opts "--frames-overlap-per-eg 0" \
--egs.chunk-width $chunk_width \
--egs.chunk-left-context $chunk_left_context \
--egs.chunk-right-context $chunk_right_context \
--egs.chunk-left-context-initial 0 \
--egs.chunk-right-context-final 0 \
--egs.dir "$common_egs_dir" \
--cleanup.remove-egs $remove_egs \
--feat-dir data/${train_set}_hires \
--tree-dir $treedir \
--lat-dir exp/tri5a_lats_nodup$suffix \
--dir $dir || exit 1;
fi
if [ $stage -le 14 ]; then
# Note: it might appear that this $lang directory is mismatched, and it is as
# far as the 'topo' is concerned, but this script doesn't read the 'topo' from
# the lang directory.
utils/mkgraph.sh --self-loop-scale 1.0 data/lang_fsh_sw1_tg $dir $dir/graph_fsh_sw1_tg
fi
decode_suff=fsh_sw1_tg
graph_dir=$dir/graph_fsh_sw1_tg
if [ $stage -le 15 ]; then
rm $dir/.error 2>/dev/null || true
[ -z $extra_left_context ] && extra_left_context=$chunk_left_context;
[ -z $extra_right_context ] && extra_right_context=$chunk_right_context;
[ -z $frames_per_chunk ] && frames_per_chunk=$chunk_width;
if [ ! -z $decode_iter ]; then
iter_opts=" --iter $decode_iter "
fi
for decode_set in rt03 eval2000; do
(
steps/nnet3/decode.sh --acwt 1.0 --post-decode-acwt 10.0 \
--nj 50 --cmd "$decode_cmd" $iter_opts \
--extra-left-context $extra_left_context \
--extra-right-context $extra_right_context \
--extra-left-context-initial 0 \
--extra-right-context-final 0 \
--frames-per-chunk "$frames_per_chunk" \
--online-ivector-dir exp/nnet3/ivectors_${decode_set} \
$graph_dir data/${decode_set}_hires \
$dir/decode_${decode_set}${decode_dir_affix:+_$decode_dir_affix}_${decode_suff} || exit 1;
steps/lmrescore_const_arpa.sh --cmd "$decode_cmd" \
data/lang_fsh_sw1_{tg,fg} data/${decode_set}_hires \
$dir/decode_${decode_set}${decode_dir_affix:+_$decode_dir_affix}_fsh_sw1_{tg,fg} || exit 1;
) || touch $dir/.error &
done
wait
if [ -f $dir/.error ]; then
echo "$0: something went wrong in decoding"
exit 1
fi
fi
test_online_decoding=true
lang=data/lang_fsh_sw1_tg
if $test_online_decoding && [ $stage -le 16 ]; then
# note: if the features change (e.g. you add pitch features), you will have to
# change the options of the following command line.
steps/online/nnet3/prepare_online_decoding.sh \
--mfcc-config conf/mfcc_hires.conf \
$lang exp/nnet3/extractor $dir ${dir}_online
rm $dir/.error 2>/dev/null || true
for decode_set in rt03 eval2000; do
(
# note: we just give it "$decode_set" as it only uses the wav.scp, the
# feature type does not matter.
steps/online/nnet3/decode.sh --nj 50 --cmd "$decode_cmd" $iter_opts \
--acwt 1.0 --post-decode-acwt 10.0 \
$graph_dir data/${decode_set}_hires \
${dir}_online/decode_${decode_set}${decode_iter:+_$decode_iter}_${decode_suff} || exit 1;
steps/lmrescore_const_arpa.sh --cmd "$decode_cmd" \
data/lang_fsh_sw1_{tg,fg} data/${decode_set}_hires \
${dir}_online/decode_${decode_set}${decode_dir_affix:+_$decode_dir_affix}_fsh_sw1_{tg,fg} || exit 1;
) || touch $dir/.error &
done
wait
if [ -f $dir/.error ]; then
echo "$0: something went wrong in online decoding"
exit 1
fi
fi
exit 0;