“2013-04-12”版本间的差异
来自cslt Wiki
第1行: | 第1行: | ||
1. Data sharing | 1. Data sharing | ||
− | (1) Acoustic data ready. PLP | + | (1) Acoustic data ready. The feature is PLP with HLDA, and the model is PLP+HLDA+MPE. All softwares ready. |
(2)The LM data and model are being transferred. | (2)The LM data and model are being transferred. | ||
第7行: | 第7行: | ||
2. DNN progress | 2. DNN progress | ||
− | (1) | + | (1) 400 hour BN training is done. MFCC+LDA (300/1200/1200/1220/40/1200/38xx), followed by (MFCC+BN) with LDA. |
− | (2) comparision between MFCC and BN | + | (2) comparision between MFCC and BN (fmpe applied). Relative improvement is xx%. |
− | (3) BN system and hybrind system: relative perforamnce. | + | (3) BN system and hybrind system: relative perforamnce comparision %xx vs %xx. |
− | (4) GPU and CPU style comparision: still on progress. | + | (4) GPU and CPU style comparision: still on progress. Working on data checking. SGE is still problematic (Chao can help). Hopefully done in 1 or two weeks. |
− | (5) RTF comparision between DNN hybrid and GMM: | + | (5) RTF comparision between DNN hybrid and GMM: %xx vs %xx. |
3.Kaldi/HTK merge | 3.Kaldi/HTK merge | ||
− | (1) HTK2Kaldi: problematic. HMM structure | + | (1) HTK2Kaldi: The tool kaldi delivered is problematic. The HMM structure seems erroratic. Need to make correction (hopefully in 1 week). |
− | (2) Kaldi2HTK: need to design a new tool. | + | (2) Kaldi2HTK: need to design a new tool (possibley in 1 week). |
4. Embedded progress | 4. Embedded progress | ||
− | (1). GFCC testing. | + | (1). GFCC training/testing. The GFCC seems highly robust to noise, while not as good as MFCC in silence. |
(2). Prototype design. Application design is on going. Plan to deliver DNN decoder. Sparse DNN might be a good solution. | (2). Prototype design. Application design is on going. Plan to deliver DNN decoder. Sparse DNN might be a good solution. |
2013年4月12日 (五) 06:23的版本
1. Data sharing
(1) Acoustic data ready. The feature is PLP with HLDA, and the model is PLP+HLDA+MPE. All softwares ready.
(2)The LM data and model are being transferred.
2. DNN progress
(1) 400 hour BN training is done. MFCC+LDA (300/1200/1200/1220/40/1200/38xx), followed by (MFCC+BN) with LDA. (2) comparision between MFCC and BN (fmpe applied). Relative improvement is xx%. (3) BN system and hybrind system: relative perforamnce comparision %xx vs %xx. (4) GPU and CPU style comparision: still on progress. Working on data checking. SGE is still problematic (Chao can help). Hopefully done in 1 or two weeks. (5) RTF comparision between DNN hybrid and GMM: %xx vs %xx.
3.Kaldi/HTK merge
(1) HTK2Kaldi: The tool kaldi delivered is problematic. The HMM structure seems erroratic. Need to make correction (hopefully in 1 week). (2) Kaldi2HTK: need to design a new tool (possibley in 1 week).
4. Embedded progress
(1). GFCC training/testing. The GFCC seems highly robust to noise, while not as good as MFCC in silence.
(2). Prototype design. Application design is on going. Plan to deliver DNN decoder. Sparse DNN might be a good solution.
(3). QA LM training, word files ready. trying to start the LM training. Refer to the doc Chao provided. /nfs/asrhome/asr/lm/chs.lm/lm.qa