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首页> 外文期刊>Journal of Applied Remote Sensing >Hyperspectral material identification on radiance data using single-atmosphere or multiple-atmosphere modeling
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Hyperspectral material identification on radiance data using single-atmosphere or multiple-atmosphere modeling

机译:使用单大气层或多大气层模型对辐射数据进行高光谱物质识别

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摘要

Reflectance-domain methods convert hyperspectral data from radiance to reflectance using an atmospheric compensation model. Material detection and identication are performed by comparing the compensated data to target reflectance spectra. We introduce two radiancedomain approaches, Single atmosphere Adaptive Cosine Estimator (SACE) and Multiple atmosphere ACE (MACE) in which the target reflectance spectra are instead converted into sensorreaching radiance using physics-based models. For SACE, known illumination and atmospheric conditions are incorporated in a single atmospheric model. For MACE the conditions are unknown so the algorithm uses many atmospheric models to cover the range of environmental variability, and it approximates the result using a subspace model. This approach is sometimes called the invariant method, and requires the choice of a subspace dimension for the model. We compare these two radiance-domain approaches to a Reflectance-domain ACE (RACE) approach on a HYDICE image featuring concealed materials. All three algorithms use the ACE detector, and all three techniques are able to detect most of the hidden materials in the imagery. For MACE we observe a strong dependence on the choice of the material subspace dimension. Increasing this value can lead to a decline in performance.
机译:反射域方法使用大气补偿模型将高光谱数据从辐射转换为反射。通过将补偿后的数据与目标反射光谱进行比较,可以进行材料检测和识别。我们介绍了两种辐射域方法,即单大气层自适应余弦估计器(SACE)和多大气层ACE(MACE),其中使用基于物理的模型将目标反射光谱转换为传感器到达的辐射。对于SACE,将已知的光照和大气条件合并到一个大气模型中。对于MACE,条件是未知的,因此该算法使用许多大气模型来覆盖环境变异性的范围,并使用子空间模型来近似结果。这种方法有时称为不变方法,需要为模型选择子空间尺寸。我们将这两种辐射域方法与具有隐藏材料的HYDICE图像上的反射域ACE(RACE)方法进行了比较。这三种算法都使用ACE检测器,并且所有三种技术都能够检测出图像中大多数隐藏的材料。对于MACE,我们观察到强烈依赖于材料子空间尺寸的选择。增大此值可能会导致性能下降。

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