“Lantian Li 14-12-01”版本间的差异
来自cslt Wiki
(以“Weekly Summary 1. Compare the performance between SVM and MLR, and the result is that MLR is worse than SVM. I think there are two reasons. 1/ the training dataset...”为内容创建页面) |
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第1行: | 第1行: | ||
Weekly Summary | Weekly Summary | ||
− | 1. | + | 1. Model Cluster: three ways to measure the distance between two models. |
− | + | 2. Explore the different score method between UBM minus GMM or GMM minus UBM, and the performance EER | |
− | + | shows that GMM minus UBM is a bit better. | |
− | + | 3. With the help of Z.-Y Zhang, using DNN-Decoder to decode the phoneme of each digital utterance. | |
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Next Week | Next Week | ||
− | 1. | + | 1. Using the phoneme results and lexicon to position each digit and segment each utterance. |
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− | 2 | + | 2. Make UBM adaptation to get 9 digit-dependent UBMs. |
− | 3 | + | 3. Experiments this digit-dependent system. |
2014年12月1日 (一) 11:33的版本
Weekly Summary
1. Model Cluster: three ways to measure the distance between two models.
2. Explore the different score method between UBM minus GMM or GMM minus UBM, and the performance EER
shows that GMM minus UBM is a bit better.
3. With the help of Z.-Y Zhang, using DNN-Decoder to decode the phoneme of each digital utterance.
Next Week
1. Using the phoneme results and lexicon to position each digit and segment each utterance.
2. Make UBM adaptation to get 9 digit-dependent UBMs.
3. Experiments this digit-dependent system.