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Kaldi Offline Transcriber

Updates

2022-05-26

2021-06-15

  • Integrated spoken language identification model that filters out non-Estonian utterances before decoding
  • New Docker image with new models; the default workflow now doesn't use LM rescoring (only RNNLM rescoring)

2018-10-31

  • Introduced a new JSON format for holding all information about the transcription (speakers, words, timings)
  • Subtitles are now split to shorter segments
  • TRS files now contain turns without utterance breaks

2018-09-12

  • Updated speaker ID models

2018-08-31

  • Added a Dockerfile for building a Docker image with Estonian models, a pre-built image is also available, see here.

2018-08-21

  • Changed the speaker ID system to use Kaldi's native i-vector scoring. That means that Tensorflow and Keras are no longer needed for doing speaker identification.

2018-08-08

  • Some refactorings, and new models, and RNNLM rescoring. Also, now uses a decoding with special unknkwon word handling, which makes it possible to produce words not in the LM is the final output. Details will be added later.

2017-05-29

  • Replaced Kaldi-based speaker ID with a custom DNN-based implementation. Requires Keras 1.2.

2017-05-02

  • Replaced the usage of the pyfst library in compounder.py with OpenFst's native Python extension (issue #14). See below on how to install it.

2017-02-13

  • Migrated to Kaldi's chain models. Needs fairly recent version of Kaldi, so you need to recompile Kaldi if you are upgrading. Better accuracy and faster than before (0.6 x realtime using one CPU).

  • The acoustic models are trained using noised and reverberated audio data, which means that the ASR accuracy on noisy data should be much better. Also, improved the robustness of speech-non-speech detection against noise.

  • The python scripts should now work for both Python 2.7 and 3.3+

2015-12-29

  • Updated acoustic and language models (see below on how to update). No need to update Kaldi. Recognition errors reduced by more than 10%. Word error rate on broadcast conversations is about 14%.

2015-05-14

  • Removed the option to decode using non-online (old style) nnet2 models since the online nnet2 models are more accurate and faster (they don't require first pass decoding using triphone models).

  • Decoding using online nnet2 models now uses non-online decoder because it allows multithreaded execution. This means that the whole transcription process from start to finish works in 1.3x realtime when using one thread, and in 0.8x realtime when using nthreads=4 on a 8 year old server.

  • Segments recognized as music and jingle are now reflected as filler segments in the final .trs files (probably not important for most users).

  • Implemented a framework for automatic punctuation. The punctuation models are not yet publicly available, will be soon.

2015-03-11

  • Language model has been updated on recent text data.

2014-12-17

  • Fixed handling of names with multipart surnames, etc (such as Erik-Niiles Kross) in the speaker ID system. Download new models.

2014-12-04

  • Updated online DNN acoustic models (now they use multisplice features), which results in lower word error rate than offline SAT DNNs. Word error rate on broadcast conversations is now about 17%. Made decoding using online DNNs default. Also, refactored speaker ID system a bit. NB: requires fairly recent Kaldi. Update Kaldi and download new models as documented below.

2014-10-24

  • Implemented alternative transcribing scheme using online DNN models using speaker i-vector as extra input (actually wrapped the corresponding Kaldi implementation). This is requires only one pass over the audio but gives about 10% relatively more errors. This scheme can activated using the --nnet2-online true option to speech2text.sh, or the DO_NNET2_ONLINE=yes variable in Makefile.options.

2014-10-23

  • Now uses language model rescoring using "constant ARPA" LM implemented recently in Kaldi, which makes LM rescoring faster and needs less memory. You have to update Kaldi to use this.
  • Uploaded new Estonian acoustic and language models. Word error rate on broadcast conversations is about 18%.

2014-08-03

  • Implemented very experimental speaker ID system using i-vectors

Introduction

This is an offline transcription system for Estonian based on Kaldi (https://github.com/kaldi-asr/kaldi).

The system is targetted to users who have no speech research background but who want to transcribe long audio recordings using automatic speech recognition.

Much of the code is based on the training and testing recipes that come with Kaldi.

The system performs:

  • Speech/non-speech detection, speech segmentation, speaker diarization (using the LIUMSpkDiarization package, http://lium3.univ-lemans.fr/diarization)
  • Language identification
  • Three-pass decoding
    • With Kaldi's so-called chain TDNN acoustic models that use i-vectors for speaker adaptation
    • Rescoring with a larger language model
    • Rescoring with a recurrent neural network language model
  • Finally, the recognized words are reconstructed into compound words (i.e., decoding is done using de-compounded words). This is the only part that is specific to Estonian.

Trancription is performed in roughly 0.6x realtime on a 10 year old server, using one CPU. E.g., transcribing a radio inteview of length 8:23 takes about 5 minutes.

Memory requirements: during most of the work, less than 1 GB of memory is used.

Requirements

Server

Server running Linux is needed. The system is tested on Debian 'testing', but any modern distro should do.

Memory requirements

  • Around 8GB of RAM is required to initialize the speech recognition models (make .init)
  • Around 2GB of RAM is required for actual transcription, once the models have been initialized

Remarks

If you plan to process many recordings in parallel, we recommend to turn off hyperthreading in server BIOS. This reduces the number of (virtual) cores by half, but should make processing faster, if you won't run more than N processes in parallel, where N is the number of physical cores.

It is recommended (but not needed) to create a decicated user account for the transcription work. In the following we assume the user is speech, with a home directory /home/speech.

Installation

See Dockerfile on how to install all the required components.

Usage

Put a speech file under src-audio. Many file types (wav, mp3, ogg, mpg, m4a) are supported. E.g:

cd src-audio
wget http://media.kuku.ee/intervjuu/intervjuu201306211256.mp3
cd ..

To run the transcription pipeline, execute make build/output/<filename>.txt where filename matches the name of the audio file in src-audio (without the extension). This command runs all the necessary commands to generate the transcription file.

For example:

make build/output/intervjuu201306211256.txt

Result (if everything goes fine, after about 5 minutes later (audio file was 8:35 in length, resulting in realtime factor of 0.6)). Also demos automatic punctuation (not yet publicly available):

# head -5 build/output/intervjuu201306211256.txt

Palgainfoagentuur koostöös CV-Online'i ja teiste partneritega viis kevadel läbi tööandjate ja töötajate palgauuringu. Meil on telefonil nüüd palgainfoagentuuri juht Kadri Seeder. Tervist.
Kui laiapõhjaline see uuring oli, ma saan aru, et ei ole kaasatud ainult Eesti tööandjad ja töötajad.
Jah, me seekord viisime uuringu läbi ka Lätis ja Leedus ja, ja see on täpselt samasuguse metoodikaga, nii et me saame võrrelda Läti ja Leedu andmeid, seda küll veel mitte täna sellepärast et Läti-Leedu tööandjatel ankeete lõpetavad.
Täna vaatasime töötajate tööotsijate uuringus väga põgusalt sisse, et need tulemused tulevad. Juuli käigus
aga kui rääkida tänasest esitlusest, siis tee pöörasid tähelepanu sellele, kui täpsemalt rääkisite sellest, millised on toimunud ja prognoositavad muutused põhipalkades ja nende põhjused, kas saaksite meile ka sellest rääkida.

Note that in the .txt file, all recognized sentences are title-cased and end with a '.'.

The system can also generate a result in other formats:

  • .trs -- XML file in Transcriber (http://trans.sourceforge.net) format, with speakers information, sentence start and end times
  • .ctm -- CTM file in NIST format -- contains timing information for each recognized word
  • .with-compounds.ctm -- same as .ctm, but compound words are concatenated using the '+' character
  • .sbv -- subtitle file format, can be used for adding subtitles to YouTube videos

For example, to create a subtitle file, run

make build/output/intervjuu201306211256.sbv

Note that generating files in different formats doesn't add any runtime complexity, since all the different output files are generated from the same internal representation.

To remove the intermediate files generated during decoding, run the pseudo-target make .filename.clean, e.g.:

make .intervjuu201306211256.clean

Alternative usage

Alternatively, one can use the wrapper script speech2text.sh to transcribe audio files. The scripts is a wrapper to the Makefile-based system. The scripts can be called from any directory.

E.g., being in some data directory, you can execute:

/home/speech/kaldi-offline-transcriber/speech2text.sh --trs result/test.trs audio/test.ogg

This transcribes the file audio/test.ogg and puts the result in Transcriber XML format to result/test.trs. The script automatically deletes the intermediate files generated during decoding, unless the option --clean false is used.