Published on Fri May 10 2019

Analysis of Probabilistic multi-scale fractional order fusion-based de-hazing algorithm

U. A. Nnolim

A de-hazing algorithm based on probability and multi-scale fractional order-based fusion is proposed. The results of the proposed algorithm are analyzed and compared with existing methods from the literature.

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Abstract

In this report, a de-hazing algorithm based on probability and multi-scale fractional order-based fusion is proposed. The proposed scheme improves on a previously implemented multiscale fraction order-based fusion by augmenting its local contrast and edge sharpening features. It also brightens de-hazed images, while avoiding sky region over-enhancement. The results of the proposed algorithm are analyzed and compared with existing methods from the literature and indicate better performance in most cases.

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