高光谱热测量中基于吸收的被动距离成像

Unay Dorken Gallastegi;Hoover Rueda-Chacón;Martin J. Stevens;Vivek K Goyal
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引用次数: 0

摘要

被动式高光谱长波红外测量对周围环境提供了非常重要的信息。远程目标的材料和温度决定了热辐射的光谱,而范围、空气温度和气体浓度决定了该光谱如何通过传播到传感器而被修改。本文介绍了一种基于计算分离这些现象的被动距离成像方法。以前的方法假设热和高发射物体;当物体的温度与空气温度相差不大时,测距更具有挑战性。我们的方法联合估计距离和物体的内在特性,明确考虑空气发射,尽管反射光被认为可以忽略不计。利用大气吸收的参数模型和平滑发射率估计的正则化,可以减轻反演的不确定性。为了评估我们的估计可能准确的地方,我们引入了一种技术来检测哪些场景像素受到反射下沉的显著影响。蒙特卡罗模拟证明了正则化的重要性,温差,以及许多频谱带的可用性。将该方法应用于无主动照明的自然场景长波红外(8-13 $\mathrm{\mu}\mathrm{m}$)高光谱图像数据。从15米到150米的距离特征被恢复,与激光雷达数据有很好的定性匹配,被分类为具有可忽略的反射下沉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Absorption-Based, Passive Range Imaging From Hyperspectral Thermal Measurements
Passive hyperspectral longwave infrared measurements are remarkably informative about the surroundings. Remote object material and temperature determine the spectrum of thermal radiance, and range, air temperature, and gas concentrations determine how this spectrum is modified by propagation to the sensor. We introduce a passive range imaging method based on computationally separating these phenomena. Previous methods assume hot and highly emitting objects; ranging is more challenging when objects’ temperatures do not deviate greatly from air temperature. Our method jointly estimates range and intrinsic object properties, with explicit consideration of air emission, though reflected light is assumed negligible. Inversion being underdetermined is mitigated by using a parametric model of atmospheric absorption and regularizing for smooth emissivity estimates. To assess where our estimate is likely accurate, we introduce a technique to detect which scene pixels are significantly influenced by reflected downwelling. Monte Carlo simulations demonstrate the importance of regularization, temperature differentials, and availability of many spectral bands. We apply our method to longwave infrared (8–13 $\mathrm{\mu }\mathrm{m}$) hyperspectral image data acquired from natural scenes with no active illumination. Range features from 15 m to 150 m are recovered, with good qualitative match to lidar data for pixels classified as having negligible reflected downwelling.
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