Image fusion dehazing algorithm based on multi-logarithmic transform

Xiaoping Zhou
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Abstract

In hazy scenarios, suspended particles in the atmosphere will absorb and scatter the transmitted natural light, resulting in a serious degradation of image quality obtained by imaging equipment, which greatly affects the visual perception of images. Aiming at the problems such as low contrast, color distortion and lack of detail information in areas with high haze concentration in images acquired by image acquisition equipment in hazy days, this paper proposes a dehazing algorithm based on exposure image fusion based on multi-logarithmic transform, which improves image quality while effectively dehazing images and avoids the edge effect in the sky part of images after dehazing. Firstly, the original hazy image was transformed by logarithmic multiple times to produce multiple images with different exposure to be fused. Then, all the input images with logarithmic transformation and weight graphs were fused by multi-scale pyramid fusion method to obtain the dehazing image. In order to verify the effectiveness of the algorithm in this paper, the results of the proposed algorithm and six mainstream image dehazing algorithms are compared in two aspects: subjective evaluation and objective evaluation. Experimental results show that the image processed by the proposed algorithm presents better visual effects than that processed by other algorithms. The proposed algorithm can effectively improve image contrast, improve image distortion, improve the visibility of detail information in areas with high hazy concentration, and the scenery color is natural. Good results are obtained under two objective evaluation indexes of image quality, namely peak signal-to-noise ratio and structural similarity, which further proves that the algorithm proposed in this paper has good dehazing performance, can effectively improve the image visibility, and has a good overall color preservation degree of the image.
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基于多对数变换的图像融合去雾算法
在雾霾场景下,大气中的悬浮粒子会吸收和散射透射的自然光,导致成像设备获得的图像质量严重下降,极大地影响了图像的视觉感受。针对雾霾天气图像采集设备获取的图像对比度低、颜色失真、高雾霾浓度区域缺乏细节信息等问题,本文提出了一种基于多对数变换的曝光图像融合去雾算法,在有效去雾图像的同时提高了图像质量,避免了去雾后图像天空部分的边缘效应。首先,对原始模糊图像进行对数多次变换,得到多幅不同曝光量的图像进行融合;然后,对所有经过对数变换和权图处理的输入图像,采用多尺度金字塔融合方法进行融合,得到去雾图像。为了验证本文算法的有效性,将本文算法与六种主流图像去雾算法的结果从主观评价和客观评价两方面进行了比较。实验结果表明,该算法处理后的图像具有较好的视觉效果。提出的算法能有效提高图像对比度,改善图像失真,提高雾霾浓度高的区域细节信息的可见性,景物色彩自然。在峰值信噪比和结构相似度这两个图像质量的客观评价指标下均取得了较好的效果,进一步证明本文提出的算法具有较好的去雾性能,能够有效提高图像的可见性,并且具有较好的图像整体色彩保持度。
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