Title :
Comparison of different strategies for a SVM-based audio segmentation
Author :
Ramona, Mathieu ; Richard, Gel
Author_Institution :
RTL (Ediradio), Paris, France
Abstract :
We compare in this paper diverse hierarchical and multi-class approaches for the speech/music segmentation task, based on Support Vector Machines, combined with a median filter post-processing. We show the effciency of kernel tuning through the novel Kernel Target Alignment criterion. Quantitative results provide an F-measure of 96.9%, that represents an error reduction of about 50% compared to the results gathered by the French ESTER evaluation campaign. We also show the relevance of the SVM with very low feature vector dimension on this task.
Keywords :
audio signal processing; median filters; speech processing; support vector machines; French ESTER evaluation campaign; SVM; audio segmentation; hierarchical approach; kernel target alignment criterion; median filter post-processing; multiclass approach; speech/music segmentation task; support vector machines; Kernel; Speech; Speech processing; Support vector machines; Taxonomy; Training; Vectors;
Conference_Titel :
Signal Processing Conference, 2009 17th European
Conference_Location :
Glasgow
Print_ISBN :
978-161-7388-76-7