The Research of a Critical Threshold Denoising Method and its Parameters Selection

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Abstract:

For soft threshold function are likely to cause a constant deviation with the original signal, hard threshold function can not fully remove noise and the selection of semi threshold function parameters is complex, we presented a critical threshold function, and analyzed the parameter selection for the new threshold. The simulation experiments prove that the denoising of critical threshold method is much better, and it also can make up for the deficiencies of traditional threshold.

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263-267

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December 2013

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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