T¨ urk M¨ uziù gi Enstrumanlarõnõn Sõnõflandõrõlmasõ Classification of Turkish Musical Instruments

In this work, Turkish musical instruments are classified with the features of mel frequency cepstral coefficients used for recogni- tion of Western musical instruments. The performance, sensitiv- ity and specificity ratios are calculated by finding the confusion matrices for different kernel parameters following multi-class classification performed by support vector machines. High per- formance reaching 97% for Ud samples and 90% in average for all samples is obtained.

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