Multi-domain Value Block Enhancement Algorithm Fused with Genetic Algorithm

Gaiyun Wang, Zhichao Guo, Jintao Shen, Jianbin Liu, Qi Zhang
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Abstract

In order to solve the problems of the low-illuminance image with low contrast and blurred details, this paper design the multi-domain value block enhancement algorithm fused with genetic algorithm. The algorithm first searches for the optimal segmentation threshold of the brightness channel of the input image through genetic algorithm. Then, according to the obtained threshold, the brightness channel is divided into multiple subgraphs with different exposure levels. Next, all subgraphs are assessed by the multi-threshold block enhancement method, and the brightness of each subgraph is adjusted according to the assessment. After that the multi-scale fusion method is used to fuse the details of the input image into the brightness-enhanced image. Finally, the output image with normal brightness and rich details is reconstructed. This paper selects the enhancement algorithm proposed in the past three years for comparison experiments. The results show that the low-illuminance image is enhanced by the algorithm in this paper. Its entropy increases by 66.2%, enhancement by entropy increases by 94.7%, and average gradient increases by 97.2%. The increase of each index of the image enhanced by the algorithm in this paper is greater than that of other comparison methods, which proves that the algorithm in this paper has better performance.
融合遗传算法的多域值块增强算法
为了解决低照度图像对比度低、细节模糊等问题,设计了融合遗传算法的多域值块增强算法。该算法首先通过遗传算法搜索输入图像亮度通道的最优分割阈值;然后,根据得到的阈值,将亮度通道划分为多个不同曝光水平的子图。然后,采用多阈值块增强方法对所有子图进行评估,并根据评估结果调整各子图的亮度。然后采用多尺度融合方法将输入图像的细节融合到亮度增强图像中。最后对亮度正常、细节丰富的输出图像进行重构。本文选取近三年来提出的增强算法进行对比实验。实验结果表明,本文算法对低照度图像有较好的增强效果。熵增加66.2%,熵增强增加94.7%,平均梯度增加97.2%。本文算法增强后的图像各指标的增幅均大于其他比较方法,证明本文算法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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