gmm-est-fmllr-gpost.cc
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// gmmbin/gmm-est-fmllr-gpost.cc
// Copyright 2009-2011 Microsoft Corporation; Saarland University
// 2013 Johns Hopkins University (author: Daniel Povey)
// 2014 Guoguo Chen
// See ../../COPYING for clarification regarding multiple authors
//
// Licensed under the Apache License, Version 2.0 (the "License");
// you may not use this file except in compliance with the License.
// You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// THIS CODE IS PROVIDED *AS IS* BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
// KIND, EITHER EXPRESS OR IMPLIED, INCLUDING WITHOUT LIMITATION ANY IMPLIED
// WARRANTIES OR CONDITIONS OF TITLE, FITNESS FOR A PARTICULAR PURPOSE,
// MERCHANTABLITY OR NON-INFRINGEMENT.
// See the Apache 2 License for the specific language governing permissions and
// limitations under the License.
#include <string>
using std::string;
#include <vector>
using std::vector;
#include "base/kaldi-common.h"
#include "util/common-utils.h"
#include "gmm/am-diag-gmm.h"
#include "hmm/transition-model.h"
#include "transform/fmllr-diag-gmm.h"
#include "hmm/posterior.h"
namespace kaldi {
void AccumulateForUtterance(const Matrix<BaseFloat> &feats,
const GaussPost &gpost,
const TransitionModel &trans_model,
const AmDiagGmm &am_gmm,
FmllrDiagGmmAccs *spk_stats) {
for (size_t i = 0; i < gpost.size(); i++) {
for (size_t j = 0; j < gpost[i].size(); j++) {
int32 pdf_id = gpost[i][j].first;
const Vector<BaseFloat> & posterior(gpost[i][j].second);
spk_stats->AccumulateFromPosteriors(am_gmm.GetPdf(pdf_id),
feats.Row(i), posterior);
}
}
}
}
int main(int argc, char *argv[]) {
try {
typedef kaldi::int32 int32;
using namespace kaldi;
const char *usage =
"Estimate global fMLLR transforms, either per utterance or for the supplied\n"
"set of speakers (spk2utt option). Reads Gaussian-level posteriors. Writes\n"
"to a table of matrices.\n"
"Usage: gmm-est-fmllr-gpost [options] <model-in> "
"<feature-rspecifier> <gpost-rspecifier> <transform-wspecifier>\n";
ParseOptions po(usage);
FmllrOptions fmllr_opts;
string spk2utt_rspecifier;
po.Register("spk2utt", &spk2utt_rspecifier, "rspecifier for speaker to "
"utterance-list map");
fmllr_opts.Register(&po);
po.Read(argc, argv);
if (po.NumArgs() != 4) {
po.PrintUsage();
exit(1);
}
string
model_rxfilename = po.GetArg(1),
feature_rspecifier = po.GetArg(2),
gpost_rspecifier = po.GetArg(3),
trans_wspecifier = po.GetArg(4);
TransitionModel trans_model;
AmDiagGmm am_gmm;
{
bool binary;
Input ki(model_rxfilename, &binary);
trans_model.Read(ki.Stream(), binary);
am_gmm.Read(ki.Stream(), binary);
}
RandomAccessGaussPostReader gpost_reader(gpost_rspecifier);
double tot_impr = 0.0, tot_t = 0.0;
BaseFloatMatrixWriter transform_writer(trans_wspecifier);
int32 num_done = 0, num_no_gpost = 0, num_other_error = 0;
if (spk2utt_rspecifier != "") { // per-speaker adaptation
SequentialTokenVectorReader spk2utt_reader(spk2utt_rspecifier);
RandomAccessBaseFloatMatrixReader feature_reader(feature_rspecifier);
for (; !spk2utt_reader.Done(); spk2utt_reader.Next()) {
FmllrDiagGmmAccs spk_stats(am_gmm.Dim());
string spk = spk2utt_reader.Key();
const vector<string> &uttlist = spk2utt_reader.Value();
for (size_t i = 0; i < uttlist.size(); i++) {
std::string utt = uttlist[i];
if (!feature_reader.HasKey(utt)) {
KALDI_WARN << "Did not find features for utterance " << utt;
num_other_error++;
continue;
}
if (!gpost_reader.HasKey(utt)) {
KALDI_WARN << "Did not find posteriors for utterance " << utt;
num_no_gpost++;
continue;
}
const Matrix<BaseFloat> &feats = feature_reader.Value(utt);
const GaussPost &gpost = gpost_reader.Value(utt);
if (static_cast<int32>(gpost.size()) != feats.NumRows()) {
KALDI_WARN << "GaussPost vector has wrong size " << (gpost.size())
<< " vs. " << (feats.NumRows());
num_other_error++;
continue;
}
AccumulateForUtterance(feats, gpost, trans_model, am_gmm, &spk_stats);
num_done++;
} // end looping over all utterances of the current speaker
BaseFloat impr, spk_tot_t;
{ // Compute the transform and write it out.
Matrix<BaseFloat> transform(am_gmm.Dim(), am_gmm.Dim()+1);
transform.SetUnit();
spk_stats.Update(fmllr_opts, &transform, &impr, &spk_tot_t);
transform_writer.Write(spk, transform);
}
KALDI_LOG << "For speaker " << spk << ", auxf-impr from fMLLR is "
<< (impr/spk_tot_t) << ", over " << spk_tot_t << " frames.\n";
tot_impr += impr;
tot_t += spk_tot_t;
} // end looping over speakers
} else { // per-utterance adaptation
SequentialBaseFloatMatrixReader feature_reader(feature_rspecifier);
for (; !feature_reader.Done(); feature_reader.Next()) {
string utt = feature_reader.Key();
if (!gpost_reader.HasKey(utt)) {
KALDI_WARN << "Did not find gposts for utterance "
<< utt;
num_no_gpost++;
continue;
}
const Matrix<BaseFloat> &feats = feature_reader.Value();
const GaussPost &gpost = gpost_reader.Value(utt);
if (static_cast<int32>(gpost.size()) != feats.NumRows()) {
KALDI_WARN << "GaussPost has wrong size " << (gpost.size())
<< " vs. " << (feats.NumRows());
num_other_error++;
continue;
}
num_done++;
FmllrDiagGmmAccs spk_stats(am_gmm.Dim());
AccumulateForUtterance(feats, gpost, trans_model, am_gmm,
&spk_stats);
BaseFloat impr, utt_tot_t;
{ // Compute the transform and write it out.
Matrix<BaseFloat> transform(am_gmm.Dim(), am_gmm.Dim()+1);
transform.SetUnit();
spk_stats.Update(fmllr_opts, &transform, &impr, &utt_tot_t);
transform_writer.Write(utt, transform);
}
KALDI_LOG << "For utterancer " << utt << ", auxf-impr from fMLLR is "
<< (impr/utt_tot_t) << ", over " << utt_tot_t << " frames.";
tot_impr += impr;
tot_t += utt_tot_t;
}
}
KALDI_LOG << "Done " << num_done << " files, " << num_no_gpost
<< " with no gposts, " << num_other_error << " with other errors.";
KALDI_LOG << "Overall fMLLR auxf impr per frame is "
<< (tot_impr / tot_t) << " over " << tot_t << " frames.";
return (num_done != 0 ? 0 : 1);
} catch(const std::exception &e) {
std::cerr << e.what();
return -1;
}
}