基于全局参数的无人机遥感图像去雾

Yuexiang Fan, Yongfeng Cao, Xiuzhang Yang
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引用次数: 2

摘要

无人机(UAV)航空测图技术以其独特的优势得到越来越广泛的应用。但在一些有雾或霾的地区,图像的可见度会严重下降。为了解决这一问题,将无人机遥感雾霾图像的消霾问题转化为两个全局参数的计算,包括航光矢量和透射率,提出了一种无人机遥感雾霾图像的形成模型。具体来说,我们首先根据局部图像亮度变化的统计规律得到航光矢量,但只使用其精确的星等;其次,在透射率和表面反射率近似恒定的情况下,我们根据像素的几何特性(投影在RGB空间中)估计精确的航光方向。第三,我们从暗通道中最暗的前20%像素计算平均传输,并将其用作全局传输。基于合成图像的去雾实验表明,该算法可以获得更精确的航迹矢量和全局传输。基于实际无人机图像的实验表明,该算法具有良好的直方图形状保持性,可以有效增强雾化图像的清晰度。对于无人机雾霾遥感影像的制图,我们的算法可以有效地改善视觉效果,增强能见度。
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Unmanned Aerial Vehicle remote sensing image dehazing via global parameters
Unmanned Aerial Vehicle (UAV) aerial mapping technology is becoming more and more widely used for its specific advantages. But in some areas, where there is fog or haze, the visibility of images degrades severely. To solve this problem, we propose a formation model for UAV remote sensing hazed images by converting the dehazing problem into the computation of two global parameters, including airlight vector and transmission. Specifically, we first get the airlight vector by a statistical law of variation in local image brightness, but only use its precise magnitude; secondly, we estimate the accurate airlight orientation based on the geometric property of pixels (projected in RGB space) of the patches in which the transmission and surface reflectance are approximately constant. Thirdly, we calculate a mean transmission from the top 20% darkest pixels in the dark channel and use it as the global transmission. The dehazing experiments based on synthetic images show that our algorithm can get a more accurate airlight vector and global transmission. The experiments based on actual UAV images show that our algorithm has a good histogram shape preservation, which can effectively enhance the clarity of the hazed images. For UAV hazed remote sensing images of mapping, our algorithm can effectively improve the visual effect and enhance visibility.
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