Image denoising method and evaluation based on mixed wavelet algorithm

The principle and evaluation method of wavelet threshold denoising are analyzed aiming at the problem that Fourier transform cannot represent the abrupt change of image effectively and wavelet transform cannot represent the texture and slow change of image effectively in the process of image denoising. Through the quantitative comparison of Fourier image denoising and wavelet image denoising, a mixed Fourier-wavelet denoising algorithm is proposed based on the different characteristics of Fourier denoising and wavelet denoising. Experimental results show that the mixed wavelet algorithm is superior to simple Fourier denoising and wavelet denoising algorithm separately, which makes up for the disadvantages of the two algorithms, and has a good application prospect in the field of image denoising.

[1]  Min Zhang,et al.  A image denoising algorithm based on sparse dictionary , 2017, 2017 7th IEEE International Conference on Electronics Information and Emergency Communication (ICEIEC).

[2]  Zheng Xing-min Image Denoising Based on Dictionary Learning Regularization , 2013 .