基于NDVI分类的可见光和红外波段相关的Sentinel-2图像去雾

Suphongsa Khetkeeree, Bannakorn Petchthaweetham, S. Liangrocapart, Sanun Srisuk
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引用次数: 1

摘要

由于电磁(EM)波在红外波段的穿透力高于可见光波段。这些波段的卫星图像细节比其他波段明显。大多数可见波段与红外波段直接变化,特别是非水域。我们可以利用这些特性来合成可见光波段来减少雾霾效应。然而,某些区域的可见光和红外波段之间的关系更为复杂。为了解决这一问题,我们提出了基于归一化植被指数(NDVI)分类的哨兵2号影像的可见光和红外波段相关去雾技术。合成的可见光波段是由红外波段的线性组合构成的。采用多元线性回归确定各公式的线性系数。NDVI用于对考虑的样本组进行分类。使用最近传感日期的无雾图像来比较可能真实的图像,包括视觉和度量比较。结果表明,本文提出的技术可以很好地用于减少雾霾效应,特别是均匀薄雾。此外,该方法的视觉效果和度量结果都优于传统方法。在雾霾较浓的情况下,我们提出的方法视觉效果更明显。然而,我们的方法在水域有一个缺点。由于它在修正类中的NDVI失败,它有更多的工件结果。
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Sentinel-2 Image Dehazing using Visible and Infrared Band Correlation Based on NDVI Classification
Due to the penetration of the electromagnetic (EM) wave in infrared are higher than the visible bands. The satellite image details from these bands are obviously than others. Most of the visible bands directly varied with the infrared bands, especially the non-water area. We can employ these properties to generate synthetic visible bands for decreasing the haze effect. However, some area has a more complex relation between visible and infrared bands. To overcome this problem, we proposed the dehazing technique for Sentinel-2 imagery by using visible and infrared band correlation based on the Normalized Difference Vegetation Index (NDVI) classification. The synthetic visible bands are constructed from the linear combination of the infrared bands. The multiple linear regression is applied to determine the linear coefficients of each formula. The NDVI is employed to classify the group of considered samples. The haze-free images with the nearest sensing date were employed to compare probably realistic images, both visual and metric comparisons. The results show that our proposed techniques can be well applied to reduce the haze effects, especially the uniform thin haze. Moreover, there give both visual and metrics results superior to the traditional method. In the case of thick haze, our proposed methods give more obvious vision. However, our methods have a disadvantage in the water areas. It had more artifact results due to its NDVI failure in the corrected classes.
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