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Fractional Multiscale Fusion-based De-hazing

2018-08-29 09:06:05
Uche A. Nnolim

Abstract

This report presents the results of a proposed multi-scale fusion-based single image de-hazing algorithm, which can also be used for underwater image enhancement. Furthermore, the algorithm was designed for very fast operation and minimal run-time. The proposed scheme is the faster than existing algorithms for both de-hazing and underwater image enhancement and amenable to digital hardware implementation. Results indicate mostly consistent and good results for both categories of images when compared with other algorithms from the literature.

Abstract (translated)

该报告提出了所提出的基于多尺度聚变的单图像去雾算法的结果,该算法也可用于水下图像增强。此外,该算法设计用于非常快速的操作和最短的运行时间。所提出的方案比用于去雾和水下图像增强的现有算法更快并且适合于数字硬件实现。结果表明,与文献中的其他算法相比,两类图像的结果大致一致且良好。

URL

https://arxiv.org/abs/1808.09697

PDF

https://arxiv.org/pdf/1808.09697.pdf


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