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文献详情 >Local linear wavelet neural ne... 收藏

Local linear wavelet neural network and RLS for usable speech classification

作     者:Sahoo, Suchismita Sahoo, Sushree Sangita Senapati, M.R. Dash, P.K. 

作者机构:Department of Computer Science and Engineering Koustuv Institute of Self Domain Biju Patnaik University of Technology India Department of Information Technology M.Tech Scholar Koustuv Institute of Self Domain Biju Patnaik University of Technology India S'O'A University India 

出 版 物:《International Journal of Computer Science Issues》 (Int. J. Comput. Sci. Issues)

年 卷 期:2011年第8卷第4 4-1期

页      面:412-418页

核心收录:

主  题:Speech processing 

摘      要:While operating in a co-channel environment, the accuracy of the speech processing technique degrades. When more than one person is talking at same time, then there occurs the co-channel speech. The objective of usable speech segmentation is identification and extraction of those portions of co-channel speech that are degraded in a negligible range but still needed for various speech processing application like speaker identification. Some features like usable speech measures are extracted from the co-channel signal to differentiate between usable and unusable types of speech. The features are extracted recursively by this new method and variable length segmentation is carried out by making sequential decision on class assignment of LLWNN pattern classifier. The correct classification using this technique is 84.5% whereas the false classification is 15.5%. The result shows that the proposed classifier gives better classification and is robust.

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