“ASR Status Report 2017-12-25”版本间的差异

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{| class="wikitable"
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!Date!!People !! Last Week !! This Week !! Task Tracking
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| rowspan="8"|2017.12.18
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|Ying Shi 
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* Finish the Voice-printer program
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* Apply the software copyright of Voice-printer
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* APSIPA 2017
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* Finish the software copyright of Voice-checker
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* Baseline of similar language recongnition system(i-vector, DNN, PTN)
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* focus on function other than UI
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* i-vector LID first
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|Lantian Li 
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* Optimize the demo of `VV_Seg` and `VV_QuickMark`.
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* Phone-aware scorning on deep speaker feature. [http://192.168.0.51:5555/cgi-bin/cvss/cvss_request.pl?account=lilt&step=view_request&cvssid=643]
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* Phone-aware scorning.
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* Overlap training for speaker features.
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* test on trivial dataset
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|Zhiyuan Tang
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* easy-to-read interfaces for Parrot
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* phone-level likelihood for detail diagnosis and an alpha version Parrot for test inside lab
 
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2017年12月25日 (一) 05:00的版本

Date People Last Week This Week Task Tracking
2017.12.25


Ying Shi
Lantian Li
  • Complete the recipe for `VV_FACTOR`.
  • 16K and 8K deep speaker model comparison.[1]
  • Patent for `VV_QuickMark`.
  • Complete the demo for `VV_FACTOR`.[Assign to Shouyi Dai]
  • Phonetic speaker embedding.
  • Overlap training for speaker features.
Zhiyuan Tang




Date People Last Week This Week Task Tracking
2017.12.18


Ying Shi
  • Finish the Voice-printer program
  • Apply the software copyright of Voice-printer
  • APSIPA 2017
  • Finish the software copyright of Voice-checker
  • Baseline of similar language recongnition system(i-vector, DNN, PTN)
  • focus on function other than UI
  • i-vector LID first
Lantian Li
  • Optimize the demo of `VV_Seg` and `VV_QuickMark`.
  • Phone-aware scorning on deep speaker feature. [2]
  • Phone-aware scorning.
  • Overlap training for speaker features.
  • test on trivial dataset
Zhiyuan Tang
  • easy-to-read interfaces for Parrot
  • phone-level likelihood for detail diagnosis and an alpha version Parrot for test inside lab