International Journal of Signal System Control and Engineering Application

Year: 2011
Volume: 4
Issue: 4
Page No. 69 - 73

Combining Audio-Video Based Segmentation and Classification Using SVM

Authors : K. Subashini, S. Palanivel and V. Ramaligam

Abstract: The objective in any pattern recognition problem is to capture the characteristics common to each class from features of the segmented data. Audio-video segmentation and classification can provide useful information for multimedia indexing and retrieval. In this study, researchers present a approach to segment and categorize the audio-video classification and highlighted detection. Researchers investigate the performance of Mel-frequency cepstral coefficients and color histogram in a support vector machines frame work and compare it to traditional audio-video features. Researchers achieve a correct identification closed to 96.23% on proposed method. Thus, the new technology for audio-video segmentation and classification obtained effective and efficient results compared to individual results.

How to cite this article:

K. Subashini, S. Palanivel and V. Ramaligam, 2011. Combining Audio-Video Based Segmentation and Classification Using SVM. International Journal of Signal System Control and Engineering Application, 4: 69-73.

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