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Remote sensing based on hyperspectral data analysis

机译:基于高光谱数据分析的遥感技术

摘要

In remote sensing, accurate identification of far objects, especially concealed objects is difficult. In this study, to improve object detection from a distance, the hyperspecral imaging and wideband technology are employed with the emphasis on wideband radar. As the wideband data includes a broad range of frequencies, it can reveal information about both the surface of the object and its content. Two main contributions are made in this study:1) Developing concept of return loss for target detection: Unlike typical radar detection methods which uses radar cross section to detect an object, it is possible to enhance the process of detection and identification of concealed targets using the wideband radar based on the electromagnetic characteristics conductivity, permeability, permittivity, and return loss of materials. During the identification process, collected wideband data is evaluated with information from wideband signature library which has already been built. In fact, several classes (e.g. metal, wood, etc.) and subclasses (ex. metals with high conductivity) have been defined based on their electromagnetic characteristics. Materials in a scene are then classified based on these classes. As an example, materials with high electrical conductivity can be conveniently detected. In fact, increasing relative conductivity leads to a reduction in the return loss. Therefore, metals with high conductivity (ex. copper) shows stronger radar reflections compared with metals with low conductivity (ex. stainless steel). Thus, it is possible to appropriately discriminate copper from stainless steel.2) Target recognition techniques: To detect and identify targets, several techniques have been proposed, in particular the Multi-Spectral Wideband Radar Image (MSWRI) which is able to localize and identify concealed targets. The MSWRI is based on the theory of robust capon beamformer. During identification process, information from wideband signature library is utilized. The WB signature library includes such parameters as conductivity, permeability, permittivity, and return loss at different frequencies for possible materials related to a target. In the MSWRI approach, identification procedure is performed by calculating the RLs at different selected frequencies. Based on similarity of the calculated RLs and RL from WB signature library, targets are detected and identified.Based on the simulation and experimental results, it is concluded that the MSWRI technique is a promising approach for standoff target detection.
机译:在遥感中,很难准确识别远处的物体,尤其是隐藏的物体。在这项研究中,为了提高远距离的物体检测能力,采用了高光谱成像和宽带技术,重点是宽带雷达。由于宽带数据包含广泛的频率范围,因此它可以揭示有关对象表面及其内容的信息。这项研究有两个主要贡献:1)发展用于目标检测的回波损耗概念:与使用雷达横截面检测物体的典型雷达检测方法不同,可以通过使用雷达横截面来增强对隐藏目标的检测和识别过程基于材料的电磁特性(电导率,磁导率,介电常数和回波损耗)的宽带雷达。在识别过程中,将使用已建立的宽带签名库中的信息对收集的宽带数据进行评估。实际上,基于它们的电磁特性,已经定义了几类(例如金属,木材等)和子类(例如具有高导电性的金属)。然后根据这些类别对场景中的材质进行分类。例如,可以方便地检测具有高电导率的材料。实际上,增加相对电导率导致回波损耗的减小。因此,与低电导率的金属(例如不锈钢)相比,高电导率的金属(例如铜)显示出更强的雷达反射。因此,可以从不锈钢中适当地区分铜。2)目标识别技术:为了检测和识别目标,已提出了几种技术,尤其是能够定位和识别多光谱宽带雷达图像(MSWRI)。隐藏的目标。 MSWRI基于稳健的Capon波束形成器理论。在识别过程中,利用了宽带签名库中的信息。 WB签名库包含诸如电导率,磁导率,介电常数和与目标相关的可能材料在不同频率下的回波损耗等参数。在MSWRI方法中,通过计算不同选定频率下的RL来执行识别过程。基于WB签名库计算的RL和RL的相似性,对目标进行检测和识别。基于仿真和实验结果,得出结论,MSWRI技术是一种有前途的目标检测方法。

著录项

  • 作者

    Sharifahmadian Ershad;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
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