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Illumination and shadow compensation of hyperspectral images using a digital surface model and non-linear least squares estimation

机译:使用数字表面模型和非线性最小二乘估计的高光谱图像的照明和阴影补偿

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Object detection and material classification are two central tasks in electro-optical remote sensing and hyper-spectral imaging applications. These are challenging problems as the measured spectra in hyperspectral images from satellite or airborne platforms vary significantly depending on the light conditions at the imaged surface, e.g., shadow versus non-shadow. In this work, a Digital Surface Model (DSM) is used to estimate different components of the incident light. These light components are subsequently used to predict what a measured spectrum would look like under different light conditions. The derived method is evaluated using an urban hyperspectral data set with 24 bands in the wavelength range 381.9 nm to 1040.4 nm and a DSM created from LIDAR 3D data acquired simultaneously with the hyperspectral data.
机译:对象检测和材料分类是电光遥感和超光谱成像应用中的两个中央任务。这些是挑战性问题,因为来自卫星或空气平台的高光谱图像中测量光谱根据成像表面的光条件而变化显着变化,例如阴影与非阴影。在这项工作中,数字表面模型(DSM)用于估计入射光的不同组件。随后使用这些光组分来预测在不同光线条件下测量的光谱看起来像什么。使用在波长范围381.9nm至1040.4nm中的带有24条带的城市高光谱数据集和从与高光谱数据同时获取的LIDAR 3D数据创建的DSM来评估派生方法。

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