Validity-guided fuzzy clustering evaluation for neural network-based time-frequency reassignment

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Abstract

This paper describes the validity-guided fuzzy clustering evaluation for optimal training of localized neural networks (LNNs) used for reassigning time-frequency representations (TFRs). Our experiments show that the validity-guided fuzzy approach ameliorates the difficulty of choosing correct number of clusters and in conjunction with neural network-based processing technique utilizing a hybrid approach can effectively reduce the blur in the spectrograms. In the course of every partitioning problem the number of subsets must be given before the calculation, but it is rarely known apriori, in this case it must be searched also with using validity measures. Experimental results demonstrate the effectiveness of the approach. Copyright © 2010 Imran Shafi et al.

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Shafi, I., Ahmad, J., Shah, S. I., Ikram, A. A., Ahmad Khan, A., & Bashir, S. (2010). Validity-guided fuzzy clustering evaluation for neural network-based time-frequency reassignment. Eurasip Journal on Advances in Signal Processing, 2010. https://doi.org/10.1155/2010/636858

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