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Image enhancement using deep-learning fully connected neural network mean filter
Authors:Lu  Ching-Ta  Wang  Ling-Ling  Shen  Jun-Hong  Lin  Jia-An
Affiliation:1.Department of Information Communication, Asia University, Taichung City, 41354, Taiwan, ROC
;2.Department of Medical Research, China Medical University Hospital, China Medical University, Taichung City, 40402, Taiwan, ROC
;3.Department of Digital Media Design, Asia University, Taichung City, 41354, Taiwan, ROC
;
Abstract:

Improving the quality of a noisy image is important for image applications. Many novel schemes pay great efforts in the removal of impulse noise. Most of them restore noisy pixels only by using the neighboring noise-free pixels, but the relationship between a noisy image and its noise-free one, which denotes the clean image not corrupted by noise, is ignored. So the reconstruction quality cannot be further improved. In this study, we employ a deep-learning fully connected neural network (FCNN) to select top N candidates of neighboring un-corrupted pixels for the restoration of a center noisy pixel in an analysis window. Hence, the mean value of the gray levels of these top N pixels is computed and employed to replace the noisy pixel, yielding the noisy pixel being restored. The experimental results reveal that the proposed deep-learning FCNN mean filter can remove impulse noise effectively in corrupted images with different noise densities.

Keywords:
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