使用偏振高光谱成像增强材料识别

Jacob A. Martin, K. Gross
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引用次数: 2

摘要

偏振成像和高光谱成像是两种最常用的遥感方式。虽然在这两个领域分别做了大量的工作,但将两者结合使用所做的工作相对较少。结合这两种常见的遥感技术,我们希望在不先验地了解当地天气条件或物体表面温度的情况下估计折射率。一般来说,这是一个不确定的问题,但对折射率的光谱行为进行建模减少了描述折射率所需的参数数量,从而减少了反射。这允许额外的场景参数需要描述从一个目标的辐射签名被同时解决。该方法使用光谱分辨的S0和S1亮度测量,使用安装在前面的线性偏振片的IFTS,同时求解材料折射率、表面温度和下流辐射。还可以采取相对于表面法线的多角度测量,以提供进一步的拟合约束信息。仿真和实测数据的结果表明,该技术对物体温度变化具有较强的鲁棒性。
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Enhanced material identification using polarimetric hyperspectral imaging
Polarimetric and hyperspectral imaging are two of the most frequently used remote sensing modalities. While extensive work has been done in both fields independently, relatively little work has been done using both in conjunction with one another. Combining these two common remote sensing techniques, we hope to estimate index of refraction, without a priori knoweledge of local weather conditions or object surface temperature. In general, this is an underdetermined problem, but modeling the spectral behavior of the index of refraction reduces the number of parameters needed to describe the index of refraction, and thus the reflectively. This allows additional scene parameters needed to describe the radiance signature from a target to be simulataneously solved for. The method uses spectrally resolved S0 and S1 radiance measurements, taken using an IFTS with a linear polarizer mounted to the front, to simultaneously solve for a materials index of refraction, surface temperature, and downwelling radiance. Measurements at multiple angles relative to the surface normal can also be taken to provide further constraining information in the fit. Results on both simulated and measured data are presented showing that this technique is largely robust to changes in object temperature.
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