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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Enhancement of low exposure images via recursive histogram equalization algorithms
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Enhancement of low exposure images via recursive histogram equalization algorithms

机译:通过递归直方图均衡算法增强低曝光图像

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摘要

This paper proposes two exposure based recursive histogram equalization methods for image enhancement. The proposed methods are very effective for images acquired in low light condition like underwater sequences or night vision images. The first method is recursive exposure based sub-image histogram equalization (R-ESIHE) that recursively performs ESIHE [20] method till the exposure residue among successive iteration is less than a predefined threshold. The second method is named as recursively separated exposure based sub image histogram equalization (RS-ESIHE) that performs the separation of image histogram recursively; separate each new histogram further based on their respective exposure thresholds and equalize each sub histogram individually. The experimental results show that low exposure image enhancement problem was not addressed by earlier HE based methods, has been efficiently handled by these new methods. The performance evaluation of new methods is done in terms of image information content as well as visual quality inspection. The proposed methods outperforms earlier HE based contrast enhancement algorithms specifically for low light images. (C) 2015 Elsevier GmbH. All rights reserved.
机译:本文提出了两种基于曝光的递归直方图均衡方法进行图像增强。所提出的方法对于在弱光条件下采集的图像(如水下序列或夜视图像)非常有效。第一种方法是基于递归曝光的子图像直方图均衡(R-ESIHE),它递归执行ESIHE [20]方法,直到连续迭代之间的曝光残差小于预定阈值为止。第二种方法称为基于递归分离曝光的子图像直方图均衡(RS-ESIHE),它以递归方式执行图像直方图的分离。根据其各自的曝光阈值进一步分离每个新直方图,并分别均衡每个子直方图。实验结果表明,低曝光图像增强问题无法通过较早的基于HE的方法解决,这些新方法已对其进行了有效处理。新方法的性能评估是在图像信息内容以及视觉质量检查方面进行的。所提出的方法优于早期的基于HE的对比度增强算法,专门针对弱光图像。 (C)2015 Elsevier GmbH。版权所有。

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