基于暗通道先验的短波红外图像去雾

Shortwave Infrared Image Dehazing Based on Dark Channel Prior

  • 摘要: 针对短波红外成像系统在雾霾天气下存在图像质量模糊、分辨率低等问题,本文提出了一种基于暗通道先验理论的短波红外图像去雾算法。本文首先通过改进的暗通道先验得到暗通道图像数据,然后基于暗通道数据对大气光进行估计;为了避免目标局部高亮或细节模糊,采用引导滤波和多尺度Retinex(Multi-scale retinex,MSR)对透射率图进行细化和增强处理,最后结合大气散射模型来反演出去雾图像。实验结果表明,经此算法处理后的短波红外图像在主观视觉和客观指标方面均得到了较好的验证,去雾效果显著、细节特征丰富且明亮度适宜。

     

    Abstract: To solve the problems of blurred image quality and low-resolution weather haze in shortwave infrared imaging systems, a shortwave infrared image-defogging algorithm based on a dark channel prior is proposed. First, the algorithm obtains the dark-channel image data using an improved dark-channel prior. Then, the atmospheric light is estimated based on the dark channel data. To avoid local highlights or blurred details of the target, the transmittance map is refined and enhanced using guided filtering and multi-scale retinex (MSR). Finally, the defogged image is inverted using the atmospheric scattering model. The shortwave infrared image processed by this algorithm was verified in terms of subjective vision and objective indicators, displaying a remarkable defogging effect, rich details, and appropriate brightness.

     

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