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Approaches for processing spectral measurements of reflected sunlight for space object detection and identification.

机译:处理反射阳光光谱测量以进行空间物体检测和识别的方法。

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摘要

The proliferation of small, lightweight, 'micro-' and 'nanosatellite' (largest dimension 1m) has presented new challenges to the space surveillance community. The small size of these satellites makes them unresolvable by ground-based imaging systems. Moreover, some satellites in geo-orbit are just simply too distant to be resolved by ground systems. The core concept of using Non-Imaging Measurements (NIM) to gather information about these objects comes from the fact that after reflection on a satellite surface, the reflected light contains information about the surface materials of the satellite. This approach of using NIM for satellite evaluation is getting new attention. In this dissertation, the accuracy of using these spectral measurements to match an unknown spectrum to a database containing known spectra and to estimate the fractional composition for materials contained in a synthetic spectrum is discussed. This problem is divided into two parts, a pattern recognition problem and a spectral unmixing problem. Two methods were developed for the pattern recognition problem. The first approach is a distance classifier processing different input features. The second method is an artificial neural network designed to process central moments of real measured spectra. This spectrum database is the Spica database provided by the Maui Space Surveillance Site (MSSS), Hawaii USA and consists in spectra from more than 100 different satellites. For the spectral unmixing part, four different approaches were tested. These approaches are based on the ability of spectral signal processing to estimate fractional composition of materials from the measurement of a single spectrum. Material spectra were provided by the NASA Johnson Space Center (JSC) to create synthetic spectra. A statistical approach based on the Expectation Maximization (EM) algorithm as well as a constrained linear estimator were used to estimate fractional compositions and presence of materials in a synthetic spectrum. The last two unmixing methods are based on inverse matrices, singular value decomposition and constrained pseudoinverse. The results for material identification and relative abundance estimation are presented as a function of signal-to-noise ratio and as a function of the number of material used in the synthetic spectrum. The best results for the satellite classification problem were obtained using an artificial neural network, which has a total classification rate of 84%. The best spectral unmixing method is the linear constrained estimator. The detection rate is on average 94%, the estimation error rate is 1%, and the error detection rate for the detection of material not present in the spectrum is 10%.
机译:小型,轻量,“微型”和“纳米卫星”(最大尺寸<1m)的扩散给太空监视界提出了新的挑战。这些卫星的体积小,无法通过地面成像系统解决。而且,地球轨道上的某些卫星距离地球太远,根本无法解决。使用非成像测量(NIM)收集有关这些对象的信息的核心概念来自以下事实:在卫星表面反射后,反射的光包含有关卫星表面材料的信息。使用NIM进行卫星评估的这种方法越来越受到关注。在本文中,讨论了使用这些光谱测量值将未知光谱与包含已知光谱的数据库进行匹配并估算合成光谱中所含材料的分数组成的准确性。该问题分为两部分,模式识别问题和频谱分解问题。针对模式识别问题开发了两种方法。第一种方法是处理不同输入特征的距离分类器。第二种方法是设计用于处理实际测量光谱中心矩的人工神经网络。这个光谱数据库是美国夏威夷毛伊岛太空监视站点(MSSS)提供的Spica数据库,包含来自100多个不同卫星的光谱。对于光谱解混部分,测试了四种不同的方法。这些方法基于光谱信号处理能力,可根据单个光谱的测量结果估算材料的分数成分。美国国家航空航天局约翰逊航天中心(JSC)提供了材料光谱以创建合成光谱。基于期望最大化(EM)算法以及约束线性估计器的统计方法用于估计分数组成和合成光谱中材料的存在。最后两种解混合方法基于逆矩阵,奇异值分解和约束伪逆。材料识别和相对丰度估计的结果是信噪比的函数,也是合成光谱中使用的材料数的函数。卫星分类问题的最佳结果是使用人工神经网络获得的,总分类率为84%。最好的频谱分解方法是线性约束估计器。检出率平均为94%,估计错误率为1%,用于检测光谱中不存在的物质的检出率为10%。

著录项

  • 作者

    Cauquy, Marie-Astrid A.;

  • 作者单位

    Michigan Technological University.;

  • 授予单位 Michigan Technological University.;
  • 学科 Engineering Aerospace.; Physics Astronomy and Astrophysics.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 173 p.
  • 总页数 173
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 航空、航天技术的研究与探索;天文学;
  • 关键词

  • 入库时间 2022-08-17 11:43:23

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