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首页> 外文期刊>ISPRS journal of photogrammetry and remote sensing >Influence of atmospheric modeling on spectral target detection through forward modeling approach in multi-platform remote sensing data
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Influence of atmospheric modeling on spectral target detection through forward modeling approach in multi-platform remote sensing data

机译:基于正演建模方法的多平台遥感数据大气建模对光谱目标检测的影响

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Identifying objects or pixels of interest that are few in numbers and sparsely populated in imagery is referred to as target detection. Traditionally, the inverse modeling (IM) approach, usually a slow and computationally intensive process, is used for detecting targets using surface reflectance spectra. For the emerging online methods in remote sensing, modeling the at-sensor radiance of target material, i.e., a forward modeling (FM) approach, can be used. Compared to the IM approach, FM is better suited to online methods due to its potential for adaptation to regional atmospheric modeling. Spectral knowledge transfer of a target from a known to an unknown atmospheric condition is the primary outcome of an efficient target detection framework. However, such an endeavor requires an exhaustive assessment of the target detection process under different atmospheric models and associated uncertainties. The objective of this work is to assess the quantitative impact of atmospheric parameters on the detectability of engineered targets. Specifically, the impact of critical atmospheric parameters such as aerosol optical thickness (AOT), standard atmospheric profiles, and aerosol models are considered. For this effect, we designed a multi-platform image acquisition setup that acquired targets concurrently using a ground-based terrestrial hyperspectral imager (THI), an airborne hyperspectral imager (AVIRISNG), and a space-borne multispectral imager (Sentinel-2). We used a point-based spectroradiometer and pixel based THI to collect the in-situ reference target reflectance spectra and generated a radiance spectral library by simulating TOA radiance spectra using the Second Simulation of the Satellite Signal in the Solar Spectrum (6S) radiative transfer model. We have considered two cases of target radiance simulations, i.e., (i) corresponding to a grid of different AOT values for a predefined atmospheric and aerosol profile, and (ii) corresponding to varying combinations of atmospheric and aerosol profiles at a given AOT. The detection has been carried out using multiple target detection algorithms. Results indicate that the spectral knowledge-based targets can be detected in remote sensing data under different atmospheric model scenarios using the FM approach. A detection rate of about 75 and 50 have been consistently obtained for remote sensing data from airborne and space-borne platforms with a false alarm (FA) rate of 10(-2) to 10(-3) respectively. Change in the AOT across atmospheric models has resulted in decision-changing implications in the target detection modeling. The selection of the wrong atmospheric profile can potentially aggravate the number of FAs produced by a particular detection algorithm.
机译:识别影像中数量较少且人口稀少的感兴趣对象或像素称为目标检测。传统上,逆向建模 (IM) 方法通常是一个缓慢且计算密集型的过程,用于使用表面反射光谱检测目标。对于新兴的在线遥感方法,可以使用对目标材料的传感器辐射度进行建模,即正演建模(FM)方法。与IM方法相比,FM更适合在线方法,因为它具有适应区域大气建模的潜力。将目标从已知大气条件转移到未知大气条件的光谱知识是高效目标检测框架的主要结果。然而,这项工作需要对不同大气模式和相关不确定性下的目标探测过程进行详尽的评估。这项工作的目的是评估大气参数对工程目标可探测性的定量影响。具体来说,考虑了气溶胶光学厚度 (AOT)、标准大气剖面和气溶胶模型等关键大气参数的影响。为此,我们设计了一种多平台图像采集装置,该装置使用地面地面高光谱成像仪(THI)、机载高光谱成像仪(AVIRISNG)和星载多光谱成像仪(Sentinel-2)同时获取目标。我们使用基于点的光谱仪和基于像素的THI来收集原位参考目标反射光谱,并使用太阳光谱(6S)辐射传输模型中的卫星信号的第二次模拟来模拟TOA辐射光谱,从而生成辐射光谱库。我们考虑了两种目标辐射模拟情况,即 (i) 对应于预定义的大气和气溶胶剖面的不同 AOT 值的网格,以及 (ii) 对应于给定 AOT 下大气和气溶胶剖面的不同组合。该检测已使用多种目标检测算法进行。结果表明,采用调频方法可以在不同大气模式情景下的遥感数据中检测出基于光谱知识的目标。机载和星载平台遥感数据的检出率分别为75%和50%,误报率分别为10(-2)至10(-3)。大气模型中AOT的变化导致了目标检测建模的决策变化。选择错误的大气剖面可能会增加特定检测算法产生的FA数量。

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