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src/nnet2bin/nnet-am-fix.cc 2.8 KB
8dcb6dfcb   Yannick Estève   first commit
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  // nnet2bin/nnet-am-fix.cc
  
  // Copyright 2012  Johns Hopkins University (author:  Daniel Povey)
  
  // 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 "base/kaldi-common.h"
  #include "util/common-utils.h"
  #include "nnet2/nnet-fix.h"
  #include "nnet2/am-nnet.h"
  #include "hmm/transition-model.h"
  #include "tree/context-dep.h"
  
  int main(int argc, char *argv[]) {
    try {
      using namespace kaldi;
      using namespace kaldi::nnet2;
      typedef kaldi::int32 int32;
  
      const char *usage =
          "Copy a (cpu-based) neural net and its associated transition model,
  "
          "but modify it to remove certain pathologies.  We use the average
  "
          "derivative statistics stored with the layers derived from
  "
          "NonlinearComponent.  Note: some processes, such as nnet-combine-fast,
  "
          "may not process these statistics correctly, and you may have to recover
  "
          "them using the --stats-from option of nnet-am-copy before you use.
  "
          "this program.
  "
          "
  "
          "Usage:  nnet-am-fix [options] <nnet-in> <nnet-out>
  "
          "e.g.:
  "
          " nnet-am-fix 1.mdl 1_fixed.mdl
  "
          "or:
  "
          " nnet-am-fix --get-counts-from=1.gradient 1.mdl 1_shrunk.mdl
  ";
  
      bool binary_write = true;
      NnetFixConfig config;
      
      ParseOptions po(usage);
      po.Register("binary", &binary_write, "Write output in binary mode");
      config.Register(&po);
      
      po.Read(argc, argv);
      
      if (po.NumArgs() != 2) {
        po.PrintUsage();
        exit(1);
      }
  
      std::string nnet_rxfilename = po.GetArg(1),
          nnet_wxfilename = po.GetArg(2);
      
      TransitionModel trans_model;
      AmNnet am_nnet;
      {
        bool binary;
        Input ki(nnet_rxfilename, &binary);
        trans_model.Read(ki.Stream(), binary);
        am_nnet.Read(ki.Stream(), binary);
      }
  
      FixNnet(config, &am_nnet.GetNnet());
      
      {
        Output ko(nnet_wxfilename, binary_write);
        trans_model.Write(ko.Stream(), binary_write);
        am_nnet.Write(ko.Stream(), binary_write);
      }
      KALDI_LOG << "Copied neural net from " << nnet_rxfilename
                << " to " << nnet_wxfilename;
      return 0;
    } catch(const std::exception &e) {
      std::cerr << e.what() << '
  ';
      return -1;
    }
  }