Speech Recognition On Tuda
评估指标
Test WER
评测结果
各个模型在此基准测试上的表现结果
| Paper Title | Repository | ||
|---|---|---|---|
| PocketSphinx | 39.6% | Open Source German Distant Speech Recognition: Corpus and Acoustic Model | - |
| Kaldi | 20.5% | Open Source German Distant Speech Recognition: Corpus and Acoustic Model | - |
| DeepSpeech-Polyglot | 18.6% | - | - |
| Kaldi | 14.4% | Open Source Automatic Speech Recognition for German | |
| Hybrid CTC/Attention | 12.8% | CTC-Segmentation of Large Corpora for German End-to-end Speech Recognition | |
| IMS-Speech | 12.0% | IMS-Speech: A Speech to Text Tool | - |
| QuartzNet15x5DE (D37) | 10.2% | Scribosermo: Fast Speech-to-Text models for German and other Languages | |
| TDNN-HMM hybrid, FST (with RNNLM rescoring) | 6.93% | - | - |
| Conformer-Transducer (no LM) | 5.82% | Automatic Speech Recognition in German: A Detailed Error Analysis | - |
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