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Hyperspectral target detection analysis of a cluttered scene from a virtual airborne sensor platform using MuSES

机译:使用MuSES从虚拟机载传感器平台对凌乱场景进行高光谱目标检测分析

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The ability to predict spectral electro-optical (EO) signatures for various targets against realistic, cluttered backgrounds is paramount for rigorous signature evaluation. Knowledge of background and target signatures, including plumes, is essential for a variety of scientific and defense-related applications including contrast analysis, camouflage development, automatic target recognition (ATR) algorithm development and scene material classification. The capability to simulate any desired mission scenario with forecast or historical weather is a tremendous asset for defense agencies, serving as a complement to (or substitute for) target and background signature measurement campaigns. In this paper, a systematic process for the physical temperature and visible-through-infrared radiance prediction of several diverse targets in a cluttered natural environment scene is presented. The ability of a virtual airborne sensor platform to detect and differentiate targets from a cluttered background, from a variety of sensor perspectives and across numerous wavelengths in differing atmospheric conditions, is considered. The process described utilizes the thermal and radiance simulation software MuSES and provides a repeatable, accurate approach for analyzing wavelength-dependent background and target (including plume) signatures in multiple band-integrated wavebands (multispectral) or hyperspectrally. The engineering workflow required to combine 3D geometric descriptions, thermal material properties, natural weather boundary conditions, all modes of heat transfer and spectral surface properties is summarized. This procedure includes geometric scene creation, material and optical property attribution, and transient physical temperature prediction. Radiance renderings, based on ray-tracing and the Sandford-Robertson BRDF model, are coupled with MODTRAN for the inclusion of atmospheric effects. This virtual hyperspectral/multispectral radiance prediction methodology has been extensively validated and provides a flexible process for signature evaluation and algorithm development.
机译:能够针对现实,杂乱的背景预测各种目标的光谱电光(EO)签名的能力,对于严格的签名评估至关重要。背景和目标签名(包括羽流)的知识对于各种与科学和国防相关的应用(包括对比度分析,伪装开发,自动目标识别(ATR)算法开发和场景材料分类)至关重要。对于国防机构来说,具有预测或历史天气来模拟任何所需任务场景的能力是一项巨大的资产,可作为对目标和背景特征测量活动的补充(或替代)。在本文中,提出了一个系统的过程,用于在杂乱的自然环境场景中预测多个不同目标的物理温度和可见光-红外辐射率。考虑了虚拟机载传感器平台从杂乱的背景,从各种传感器的角度以及在不同的大气条件下跨越多个波长来检测和区分目标的能力。所描述的过程利用了热和辐射度仿真软件MuSES,并提供了一种可重复,准确的方法来分析多个波段积分波段(多光谱)或高光谱中与波长相关的背景和目标(包括羽流)特征。总结了将3D几何描述,热材料特性,自然天气边界条件,所有传热模式和光谱表面特性组合在一起所需的工程工作流程。此过程包括几何场景创建,材料和光学属性归因以及瞬态物理温度预测。基于射线追踪和Sandford-Robertson BRDF模型的辐射渲染与MODTRAN结合使用,可以包含大气效果。这种虚拟的高光谱/多光谱辐射率预测方法已得到广泛验证,并为签名评估和算法开发提供了灵活的过程。

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