“Zhiyuan Tang 2016-04-18”版本间的差异
来自cslt Wiki
(相同用户的5个中间修订版本未显示) | |||
第5行: | 第5行: | ||
1. enhancing the joint model with SWBD focusing on speech recognition, shows improvement[http://192.168.0.51:5555/cgi-bin/cvss/cvss_request.pl?account=tangzy&step=view_request&cvssid=515]; | 1. enhancing the joint model with SWBD focusing on speech recognition, shows improvement[http://192.168.0.51:5555/cgi-bin/cvss/cvss_request.pl?account=tangzy&step=view_request&cvssid=515]; | ||
− | 2. problem remains that when the WSJ was reduced to be 8k, the advantage of joint training disappeared at least for speech recognition. | + | 2. problem remains that when the WSJ was reduced to be 8k, the advantage of joint training disappeared at least for speech recognition. (comment later: WSJ was reduced to 8k by mistake, so the pipeline needs to be reconducted, conlusion 1 still stands). |
第13行: | 第13行: | ||
1. find the reason why joint training failed on 8k WSJ; | 1. find the reason why joint training failed on 8k WSJ; | ||
− | 2. following ICASSP 16. | + | 2. more experiemnts for refining the joint model, such as enhancing the enhanced model again with speaker data; |
+ | |||
+ | 3. following ICASSP 16. |
2016年4月24日 (日) 10:24的最后版本
Last week:
1. enhancing the joint model with SWBD focusing on speech recognition, shows improvement[1];
2. problem remains that when the WSJ was reduced to be 8k, the advantage of joint training disappeared at least for speech recognition. (comment later: WSJ was reduced to 8k by mistake, so the pipeline needs to be reconducted, conlusion 1 still stands).
This week:
1. find the reason why joint training failed on 8k WSJ;
2. more experiemnts for refining the joint model, such as enhancing the enhanced model again with speaker data;
3. following ICASSP 16.