HSI色彩空间中使用局部最小化和对数图像变换的薄云去除

Thanet Markchom, R. Lipikorn
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引用次数: 7

摘要

在利用卫星图像观测陆地信息时,云是最严重的障碍之一,因为云的不透明性会阻挡地面物体的能见度,还会与底层细节混合。因此,经常需要检索云所覆盖的实际信息。本文提出了一种利用HSI色彩空间代替RGB色彩空间直接去除云的新方法。该方法采用暗通道先验法的概念来估计云的外观,即散射光,并仅在强度通道中进行减法以避免对原始颜色的影响,同时通过伽马校正增强强度以恢复前一步中不小心丢失的一些信息,并恢复被云扭曲的模糊细节。此外,由于云既涉及强度通道,也涉及饱和通道,因此我们还使用对数图像变换来增加由于云而降低的饱和度。结果表明,与其他单图像方法相比,该方法在实验中获得了更高的对比度增益,可以去除不是非常不透明的云,并保留了颜色和纹理等实际信息。
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Thin Cloud Removal Using Local Minimization and Logarithm Image Transformation in HSI Color Space
In observation of land information using satellite images, clouds are one of the most serious obstacles due to their opacity property which can block the visibility of ground objects and can also be blended with the underlying details. Hence, retrieval the actual information covered by clouds is frequently necessary. In this paper, we propose a novel method to remove clouds by taking an advantage of HSI color space instead of directly removing clouds in RGB color space. The proposed method uses a concept of dark channel prior method to estimate the cloud appearance called the scattering light and perform a subtraction in only the intensity channel to avoid an effect to the original color and also enhance the intensity with gamma correction to recover some information accidentally removed from the previous step and restore obscure details distorted by clouds. Furthermore, since clouds involve in both intensity and saturation channel, we increase the saturation that was reduced as a result from clouds by using logarithm image transformation as well. From the results, the proposed method can remove clouds that are not extremely opaque and preserve the actual information such as color and texture due to the higher contrast gain in the experiments comparing to the results obtained from other single-image methods.
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