Comments (1)
Hi
I did not fully understand your question. If you have cut or padded your data into 3-second pieces, why does your data have different sizes after converting to MFCC features?
There is a problem with batching if you manually place your data in the desired folders without cutting or padding. You can't batch data with different shapes in one batch. You can use the following two methods to solve this problem:
- Equalize your data shape before or after converting it to MFCC features.
- Consider each data as a batch. For example, consider a data with a size of (102,40,1) as (1,102,40,1).
If you have more questions, feel free and ask.
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