基于透射率图像分割的改进暗通道先验去雾算法

Wenjing Yu, Jinyu He, Jing Yin, Enqi Chen
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引用次数: 1

摘要

针对暗通道先验算法在处理天空区域雾霾图像颜色失真、大气光值误差提取和场景边缘晕效应等方面的不足,提出了一种基于透射率图像的暗通道先验去雾方法。将输入的雾霾图像转换为透射图像。通过引导滤波,改进的MSR算法可以将图像分割为天空区域和非天空区域。分别对天空区和非天空区进行最小滤波和天空透射率估计。将处理后得到的两部分图像进行组合,通过快速引导滤波对传输进行细化,结合从天空区域提取的大气光值对雾霾图像进行去雾去除,得到清晰的恢复图像。实验结果表明,改进的最小滤波算法和透射率估计方法能有效去除景深边缘的光晕效应和天空区域的颜色失真,使恢复后的图像保留了更多的细节,视觉更清晰自然。与传统的暗信道先验算法相比,该算法的信息熵平均提高12.1%,PNSR平均提高6.024%,SSIM平均提高15.8%,MSE平均降低4.7%。
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An Improved Dark Channel Prior Defogging Algorithm Based on Transmissivity Image Segmentation
In view of the dark channel prior algorithm in dealing with the haze image color distortion in the sky region, atmospheric light value error extraction and scene edge halo effect, a dark channel prior defogging removal method based on transmittance image is proposed in this paper. The input haze image is converted into transmittance image. with guided filtering, the improved MSR algorithm can be used to segment the image into sky region and non-sky region. Minimum filtering and sky transmittance estimation are performed for sky region and non-sky region respectively. The two parts of images obtained by processing are combined, and the transmission is refined by fast guided filtering, and the haze image is defogging removed by combining the atmospheric light value extracted from the sky region to obtain a clear restored image. The experimental results show that the improved minimum filtering algorithm and transmittance estimation method can effectively remove the halo effect at the edge of the depth of field and the color distortion in the sky area, so that the restored image retains more details and has a clearer and natural vision. Compared with the traditional dark channel prior algorithm, the information entropy of the proposed algorithm increases by 12.1% on average, PNSR increases by 6.024% on average, SSIM increases by 15.8%, and MSE decreases by 4.7% on average.
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