首页> 外文学位 >Analysis of modeling, training, and dimension reduction approaches for target detection in hyperspectral imagery.
【24h】

Analysis of modeling, training, and dimension reduction approaches for target detection in hyperspectral imagery.

机译:分析高光谱图像中用于目标检测的建模,训练和降维方法。

获取原文
获取原文并翻译 | 示例

摘要

Whenever a new sensor or system comes online, engineers and analysts responsible for processing the measured data turn first to methods that are tried and true on existing systems. This is a natural, if not wholly logical approach, and is exactly what has happened in the advent of hyperspectral imagery (HSI) exploitation. However, a closer look at the assumptions made by the approaches published in the literature has not been undertaken.; This thesis analyzes three key aspects of HSI exploitation: statistical data modeling, covariance estimation from training data, and dimension reduction. These items are part of standard processing schemes, and it is worthwhile to understand and quantify the impact that various assumptions for these items have on target detectability and detection statistics.; First, the accuracy and applicability of the standard Gaussian (i.e., Normal) model is evaluated, and it is shown that the elliptically contoured t-distribution (EC-t) sometimes offers a better statistical model for HSI data. A finite mixture approach for EC- t is developed in which all parameters are estimated simultaneously without a priori information. Then the effects of making a poor covariance estimate are shown by including target samples in the training data. Multiple test cases with ground targets are explored. They show that the magnitude of the deleterious effect of covariance contamination on detection statistics depends on algorithm type and target signal characteristics. Next, the two most widely used dimension reduction approaches are tested. It is demonstrated that, in many cases, significant dimension reduction can be achieved with only a minor loss in detection performance.; In addition, a concise development of key HSI detection algorithms is presented, and the state-of-the-art in adaptive detectors is benchmarked for land mine targets. Methods for detection and identification of airborne gases using hyperspectral imagery are discussed, and this application is highlighted as an excellent opportunity for future work.
机译:每当新的传感器或系统上线时,负责处理测量数据的工程师和分析人员都会首先采用在现有系统上经过实践检验的方法。这是一种自然的方法,即使不是完全逻辑的方法,也正是在高光谱图像(HSI)开发出现时所发生的事情。但是,尚未仔细研究文献中发表的方法所做出的假设。本文分析了HSI开发的三个关键方面:统计数据建模,训练数据的协方差估计和降维。这些项目是标准处理方案的一部分,值得理解和量化这些项目的各种假设对目标可检测性和检测统计量的影响。首先,评估了标准高斯模型(即正态模型)的准确性和适用性,结果表明,椭圆轮廓t分布(EC-t)有时会为HSI数据提供更好的统计模型。开发了一种ECt的有限混合方法,其中在没有先验信息的情况下同时估计了所有参数。然后,通过将目标样本包括在训练数据中来显示做出差的协方差估计的效果。探索了具有地面目标的多个测试案例。他们表明,协方差污染对检测统计数据的有害影响的大小取决于算法类型和目标信号特征。接下来,测试了两种最广泛使用的降维方法。事实证明,在许多情况下,只有很小的检测性能损失就可以实现尺寸的显着减小。此外,简明介绍了关键的HSI检测算法,并针对地雷目标对自适应检测器的最新技术进行了基准测试。讨论了使用高光谱图像检测和识别空气中气体的方法,并强调了该应用是未来工作的绝佳机会。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号