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Table 6. MFCC-based results
 The use of Mel-scale Frequency Cepstral Coefficients resulted in marginally bette:
results for human speech for clear samples only, giving considerably worse classifica
tion rates for the other classes. When we added noisy samples into the male and fe
male classes, the results got slightly worse as can be seen from the tables. W:
conclude that MFCC is a useful tool when used appropriately, but it does not generate
feature vectors suitable for all audio classes. For the classes tested in this work, ou
own feature vector implementation produces significantly better results.

Table 6 MFCC-based results The use of Mel-scale Frequency Cepstral Coefficients resulted in marginally bette: results for human speech for clear samples only, giving considerably worse classifica tion rates for the other classes. When we added noisy samples into the male and fe male classes, the results got slightly worse as can be seen from the tables. W: conclude that MFCC is a useful tool when used appropriately, but it does not generate feature vectors suitable for all audio classes. For the classes tested in this work, ou own feature vector implementation produces significantly better results.


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