Here's an example for Chinese text frontend, including g2p and text normalization.
For g2p, we use BZNSYP's phone label as the ground truth and we delete silence tokens in labels and predicted phones.
You should Download BZNSYP from it's Official Website and extract it. Assume the path to the dataset is ~/datasets/BZNSYP
.
We use WER
as evaluation criterion.
For text normalization, the test data is data/textnorm_test_cases.txt
, we use |
as the separator of raw_data and normed_data.
We use CER
as evaluation criterion.
If you want to use sclite to get more detail information of WER, you should run the command below to make sclite first.
./make_sclite.sh
Run the command below to get the results of test.
./run.sh
The avg WER
of g2p is: 0.027495061517943988
The avg CER
of text normalization is: 0.006388318503308237