An improved algorithm using weighted guided coefficient and union self-adaptive image enhancement for single image haze removal

Guangbin Zhou, Lifeng He, Yong Qi, Meimei Yang, Xiao Zhao, Y. Chao
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引用次数: 3

Abstract

The visibility of outdoor images is usually significantly degraded by haze. Existing dehazing algorithms, such as dark channel prior (DCP) and colour attenuation prior (CAP), have made great progress and are highly effective. However, they all suffer from the problems of dark distortion and detailed information loss. This paper proposes an improved algorithm for single-image haze removal based on dark channel prior with weighted guided coefficient and union self-adaptive image enhancement. First, a weighted guided coefficient method with sampling based on guided image filtering is proposed to refine the transmission map efficiently. Second, the k -means clustering method is adopted to calibrate the original image into bright and non-bright colour areas and form a transmission constraint matrix. The constraint matrix is then marked by connected-component labelling, and small bright regions are eliminated to form an atmospheric light constraint matrix, which can suppress the halo effect and optimize the atmospheric light. Finally, an adaptive linear contrast enhancement algorithm with a union score is proposed to optimize restored images. Experimental results demonstrate that the proposed algorithm can overcome the problems of image distortion and detailed information loss and is more efficient than conventional dehazing algorithms.
基于加权引导系数和联合自适应图像增强的单幅图像去雾算法
户外图像的能见度通常会因雾霾而显著降低。现有的去雾算法,如暗通道先验算法(DCP)和颜色衰减先验算法(CAP),已经取得了很大的进步,并且非常有效。然而,它们都存在着暗失真和细节信息丢失的问题。提出了一种基于暗通道先验加权引导系数和联合自适应图像增强的单幅图像去雾算法。首先,提出了一种基于引导图像滤波的加权引导系数采样方法,有效地细化传输图;其次,采用k均值聚类方法将原始图像标定为明亮和非明亮的颜色区域,形成透射约束矩阵;然后对约束矩阵进行连通分量标记,消除小的明亮区域形成大气光约束矩阵,抑制光晕效应,优化大气光。最后,提出了一种带有联合分数的自适应线性对比度增强算法来优化恢复图像。实验结果表明,该算法克服了图像失真和细节信息丢失的问题,比传统的去雾算法效率更高。
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