Abstract :
In this paper, we present an approach to audio clustering, based on EM Algorithm with Gaussian Mixture. The proposed algorithm is simple and practical; it has an advantage in mass data processing. By improving it, the algorithm can be applied in audio MFCC feature clustering. For further exploration and research, firstly, we make a division of the library into speech and music by Zero-crossing Rate. And then, it is key point to further classify the library of music, such as pop music, rock music, and classical music and so on. In this process, we adopt Gaussian Mixture based on EM Algorithm, using 12-dimensional MFCC (Mel Frequency Cesptral Coefficient) as a feature vector set. The experimental results show that the proposed algorithm can demonstrate that the algorithm increases rate of audio classification compared with the unsupervised study and has good clustering ability.
Keywords :
Gaussian processes; audio signal processing; pattern clustering; signal classification; EM algorithm; Gaussian mixture; audio MFCC feature clustering; audio classification; audio clustering; mass data processing; mel frequency cesptral coefficient; zero crossing rate; EM Algorithm; Gaussian Mixture; audio clustering;