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Image dehazing based on partitioning reconstruction and entropy-based alternating fast-weighted guided filters

机译:基于分区重构和基于熵的交替快速加权导引滤波器的图像去雾

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摘要

A robust image dehazing algorithm based on the first-order scattering of the image degradation model is proposed. In this work, there are three contributions toward image dehazing: (i) a robust method for assessing the global irradiance from the most hazy-opaque regions of the imagery is proposed; (ii) more detailed depth information of the scene can be recovered through the enhancement of the transmission map using scene partitions and entropy-based alternating fast-weighted guided filters; and (iii) crucial model parameters are extracted from in-scene information. This paper briefly outlines the principle of the proposed technique and compares the dehazed results with four other dehazing algorithms using a variety of different types of imageries. The dehazed images have been assessed through a quality figure-of-merit, and experiments have shown that the proposed algorithm effectively removes haze and has achieved a much better quality of dehazed images than all other state-of-the-art dehazing methods employed in this work.
机译:提出了一种基于图像退化模型一阶散射的鲁棒图像去雾算法。在这项工作中,对图像去雾有三点贡献:(i)提出了一种鲁棒的方法来评估图像中最不透明的区域的整体辐照度; (ii)可以通过使用场景分区和基于熵的交替快速加权导引滤波器增强传输图来恢复场景的更详细的深度信息; (iii)从现场信息中提取关键模型参数。本文简要概述了提出的技术的原理,并使用多种不同类型的图像将除雾结果与其他四种除雾算法进行了比较。通过质量品质因数评估了除雾后的图像,实验表明,该算法可有效去除雾度,并且与除雾器中使用的所有其他最新除雾方法相比,可以获得更好的除雾图像质量。这项工作。

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