Abstract:In order to suppress the palm print image noise effectively and extract the palm print features accurately, a novel de-noising method based on 2-D EMD and wavelet thresholding was proposed. Firstly, the preprocessed palm print image containing noise was decomposed into some IMFs by 2-D EMD, and then the first several IMFs were processed by using wavelet thresholding de-noising method; finally, the image was reconstructed through adding the processed IMFs and the residual component. Experimental results show that the proposed method has a good effect on suppressing noise. Compared to the wavelet thresholding and 2-D EMD de-noising, the method not only has advantages of more sufficiently retaining edge and detail information while de-noising, but also achieves superior PSNR (peak signal-noise-ratio) of the reconstructed image.
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