run_dnn.sh
6.1 KB
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
#!/bin/bash
# Copyright 2012-2013 Brno University of Technology (Author: Karel Vesely)
# Apache 2.0
# In this recipe we build DNN in four stages:
# 1) Data preparations : the fMLLR features are stored to disk
# 2) RBM pre-training : in this unsupervised stage we train stack of RBMs, a good starting point for Cross-entropy trainig
# 3) Frame-level cross-entropy training : in this stage the objective is to classify frames correctly.
# 4) Sequence-criterion training : in this stage the objective is to classify the whole sequence correctly,
# the idea is similar to the 'Discriminative training' in context of GMM-HMMs.
. ./cmd.sh ## You'll want to change cmd.sh to something that will work on your system.
## This relates to the queue.
. ./path.sh ## Source the tools/utils (import the queue.pl)
#false && \
{
gmmdir=exp/tri4b
###
### Generate the alignments of dev93
### (held-out set for Cross-entropy training)
###
steps/align_fmllr.sh --nj 10 --cmd "$train_cmd" \
data/test_dev93 data/lang $gmmdir exp/tri4b_ali_dev93 || exit 1
###
### Store the fMLLR features, so we can train on them easily
###
# train si284
# generate the features
dir=data-fmllr-tri4b/train_si284
steps/make_fmllr_feats.sh --nj 20 --cmd "$train_cmd" \
--transform-dir exp/tri4b_ali_si284 \
$dir data/train_si284 $gmmdir $dir/_log $dir/_data || exit 1
# eval92
dir=data-fmllr-tri4b/test_eval92
steps/make_fmllr_feats.sh --nj 8 --cmd "$train_cmd" \
--transform-dir exp/tri4b/decode_tgpr_eval92 \
$dir data/test_eval92 $gmmdir $dir/_log $dir/_data || exit 1
# dev93 (unsupervised fMLLR)
# held-out set of Cross-entropy training
dir=data-fmllr-tri4b/test_dev93
steps/make_fmllr_feats.sh --nj 10 --cmd "$train_cmd" \
--transform-dir exp/tri4b/decode_tgpr_dev93 \
$dir data/test_dev93 $gmmdir $dir/_log $dir/_data || exit 1
}
###
### Now we can pre-train stack of RBMs
###
#false && \
{ # Pre-train the DBN
dir=exp/tri4b_pretrain-dbn
(tail --pid=$$ -F $dir/_pretrain_dbn.log 2>/dev/null)&
$cuda_cmd $dir/_pretrain_dbn.log \
steps/pretrain_dbn.sh --rbm-iter 3 data-fmllr-tri4b/train_si284 $dir
}
###
### Now we train the DNN optimizing cross-entropy.
### This will take quite some time.
###
#false && \
{ # Train the MLP
dir=exp/tri4b_pretrain-dbn_dnn
ali=exp/tri4b_ali
feature_transform=exp/tri4b_pretrain-dbn/final.feature_transform
dbn=exp/tri4b_pretrain-dbn/6.dbn
(tail --pid=$$ -F $dir/_train_nnet.log 2>/dev/null)&
$cuda_cmd $dir/_train_nnet.log \
steps/train_nnet.sh --feature-transform $feature_transform --dbn $dbn --hid-layers 0 --learn-rate 0.008 \
data-fmllr-tri4b/train_si284 data-fmllr-tri4b/test_dev93 data/lang ${ali}_si284 ${ali}_dev93 $dir || exit 1;
# decode with 'big-dictionary' (reuse HCLG graph)
steps/decode_nnet.sh --nj 10 --cmd "$decode_cmd" --acwt 0.10 --config conf/decode_dnn.config \
exp/tri4b/graph_bd_tgpr data-fmllr-tri4b/test_dev93 $dir/decode_bd_tgpr_dev93 || exit 1;
steps/decode_nnet.sh --nj 8 --cmd "$decode_cmd" --acwt 0.10 --config conf/decode_dnn.config \
exp/tri4b/graph_bd_tgpr data-fmllr-tri4b/test_eval92 $dir/decode_bd_tgpr_eval92 || exit 1;
}
###
### Finally we train using sMBR criterion.
### We do Stochastic-GD with per-utterance updates.
###
### To get faster convergence, we will re-generate
### the lattices after 1st epoch of sMBR.
###
dir=exp/tri4b_pretrain-dbn_dnn_smbr
srcdir=exp/tri4b_pretrain-dbn_dnn
acwt=0.10
# First we need to generate lattices and alignments:
#false && \
{
steps/align_nnet.sh --nj 100 --cmd "$train_cmd" \
data-fmllr-tri4b/train_si284 data/lang $srcdir ${srcdir}_ali_si284 || exit 1;
steps/make_denlats_nnet.sh --nj 100 --cmd "$decode_cmd" \
--config conf/decode_dnn.config --acwt $acwt \
data-fmllr-tri4b/train_si284 data/lang $srcdir ${srcdir}_denlats_si284 || exit 1;
}
# Now we re-train the hybrid by single iteration of sMBR
#false && \
{
steps/train_nnet_mpe.sh --cmd "$cuda_cmd" --num-iters 1 --acwt $acwt --do-smbr true \
data-fmllr-tri4b/train_si284 data/lang $srcdir \
${srcdir}_ali_si284 ${srcdir}_denlats_si284 $dir || exit 1
}
# Decode
#false && \
{
for ITER in 1; do
# decode dev93 with big dict graph_bd_tgpr
steps/decode_nnet.sh --nj 10 --cmd "$decode_cmd" --config conf/decode_dnn.config \
--nnet $dir/${ITER}.nnet --acwt $acwt \
exp/tri4b/graph_bd_tgpr data-fmllr-tri4b/test_dev93 $dir/decode_dev93_bd_tgpr_it${ITER} || exit 1
# decode eval92 with big dict graph_bd_tgpr
steps/decode_nnet.sh --nj 8 --cmd "$decode_cmd" --config conf/decode_dnn.config \
--nnet $dir/${ITER}.nnet --acwt $acwt \
exp/tri4b/graph_bd_tgpr data-fmllr-tri4b/test_eval92 $dir/decode_eval92_bd_tgpr_it${ITER} || exit 1
done
}
###
### Re-generate lattices and run several more iterations of sMBR
###
dir=exp/tri4b_pretrain-dbn_dnn_smbr_iter1-lats
srcdir=exp/tri4b_pretrain-dbn_dnn_smbr
acwt=0.10
# First we need to generate lattices and alignments:
#false && \
{
steps/align_nnet.sh --nj 100 --cmd "$train_cmd" \
data-fmllr-tri4b/train_si284 data/lang $srcdir ${srcdir}_ali_si284 || exit 1;
steps/make_denlats_nnet.sh --nj 100 --cmd "$decode_cmd" \
--config conf/decode_dnn.config --acwt $acwt \
data-fmllr-tri4b/train_si284 data/lang $srcdir ${srcdir}_denlats_si284 || exit 1;
}
# Now we re-train the hybrid by several iterations of sMBR
#false && \
{
steps/train_nnet_mpe.sh --cmd "$cuda_cmd" --num-iters 4 --acwt $acwt --do-smbr true \
data-fmllr-tri4b/train_si284 data/lang $srcdir \
${srcdir}_ali_si284 ${srcdir}_denlats_si284 $dir
}
# Decode
#false && \
{
for ITER in 1 2 3 4; do
# decode dev93 with big dict graph_bd_tgpr
steps/decode_nnet.sh --nj 10 --cmd "$decode_cmd" --config conf/decode_dnn.config \
--nnet $dir/${ITER}.nnet --acwt $acwt \
exp/tri4b/graph_bd_tgpr data-fmllr-tri4b/test_dev93 $dir/decode_dev93_bd_tgpr_it${ITER} || exit 1
# decode eval92 with big dict graph_bd_tgpr
steps/decode_nnet.sh --nj 8 --cmd "$decode_cmd" --config conf/decode_dnn.config \
--nnet $dir/${ITER}.nnet --acwt $acwt \
exp/tri4b/graph_bd_tgpr data-fmllr-tri4b/test_eval92 $dir/decode_eval92_bd_tgpr_it${ITER} || exit 1
done
}
# Getting results [see RESULTS file]
# for x in exp/*/decode*; do [ -d $x ] && grep WER $x/wer_* | utils/best_wer.sh; done