A paper presented at ICASSP2021

A paper presented at ICASSP2021

Created
May 19, 2021
Tags
PaperMachine Learning
Updated
October 11, 2021

We are excited to announce that our paper “Reflectance-oriented probability equalization for image enhancement” has been accepted to ICASSP2021.

Despite recent advances in image enhancement, it remains difficult for existing approaches to adaptively improve the brightness and contrast for both low-light and normal-light images. To solve this problem, we propose a novel 2D histogram equalization approach.

The proposed method assumes intensity occurrence and co-occurrence to be dependent on each other and derives the distribution of intensity occurrence (1D histogram) by marginalizing over the distribution of intensity co-occurrence (2D histogram). This scheme improves global contrast more effectively and reduces noise amplification. The 2D histogram is defined by incorporating the local pixel value differences in image reflectance into the density estimation to alleviate the adverse effects of dark lighting conditions.

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Over 500 images were used for evaluation, demonstrating the superiority of our approach over existing studies. It can sufficiently improve the brightness of low-light images while avoiding over-enhancement in normal-light images.

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The official publication can be accessible on IEEE Xplore.