Satellite Image Dehazing Using Fast Iterative Domain Gaussian Guided Image Filtering

N. U. Kumar, Nakka Shivakumar, S. Bachu
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Abstract

In general, satellite images are foggy due to factors such as noise, snow, thin cloud, dust, and so on, resulting in image contrast reduction. Dehazing is described as the elimination of noise or ambient contaminants from a image in order to improve image quality. However, most state-of-the-art technologies failed to completely eliminate atmospheric influences and noise from satellite images. To address this issue, this study focuses on the creation of a grey world optimization method for the correct estimate of satellite atmospheric light. The study also creates a unique technique for estimating and refining dark channel prior-based transmission maps at the pixel and patch levels. As a consequence, every pixel-based patch contains information about how satellite atmospheric effects were addressed. The fast iterative domain gaussian guided image filtering (FID-GGIF) method was created to provide output that is smooth with dehazing properties. According to the simulation results, the suggested study beats cutting-edge approaches in terms of both quantitative and qualitative results
基于快速迭代域高斯制导图像滤波的卫星图像去雾
一般情况下,卫星图像由于受到噪声、降雪、薄云、尘埃等因素的影响,呈现雾蒙蒙的状态,导致图像对比度降低。去雾被描述为从图像中消除噪声或环境污染物,以提高图像质量。然而,大多数最先进的技术都无法完全消除卫星图像中的大气影响和噪声。为了解决这一问题,本研究的重点是创建一个灰色世界优化方法,以正确估计卫星大气光。该研究还创造了一种独特的技术,用于在像素和斑块级别估计和细化暗通道基于先验的传输图。因此,每个基于像素的补丁都包含有关如何处理卫星大气影响的信息。创建了快速迭代域高斯制导图像滤波(FID-GGIF)方法,以提供具有除雾特性的平滑输出。仿真结果表明,该研究在定量和定性结果上都优于前沿方法
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