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Super-resolution HRR ATR Performance with HYVI

机译:HYVI超级分辨率HRR ATR性能

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摘要

A goal of supr-resolution, in addition to improving probability of correct classification (Pcc) in automatic target recognition systems, is to reduce radar resource requirements in achieving a given Pcc. These studies address the MIT Lincoln Laboratory 1-D template-based ATR algorithm that was developed and tested on super-resolved high range resolution (HRR) profiles formed from synthetic aperture radar (SAR) images of targets taken from the Moving and Stationary Target Acquisition and Recognition (MSTAR) data set. Prevous studies on HRR ATR demonstrated encouraging results for recognition of stationary targets rom their HRR profiles, althougth the low probability of correct classification dictates a large margin of improvement in Pcc is needed before the system can be operational. In this work, a super-resolution technique known as High Definition Vector Imaging (HDVI) is applied to the HRR profiles before the profiles are passed through the ATR classification. The new 1-D ATR system using super-resoluved HRR demonstrates significantly improved target recognition compared to previous 1-D ATR systems that use conventional image processing techniques. This paper discusses the improvement in HRR ATR performance in terms of radar resource requirements as a result of applying HDVI.
机译:除了提高自动目标识别系统中的正确分类(PCC)的概率之外,SCPR分辨率的目标是降低实现给定PCC的雷达资源要求。这些研究解决了基于MIT林肯实验室1-D模板的ATR算法,其开发和测试了由来自移动和静止目标采集所采取的综合孔径雷达(SAR)图像形成的超分辨高范围分辨率(HRR)型材。和识别(MSTAR)数据集。在HRR ATR Prevous研究显示令人鼓舞的识别结果的静止目标ROM的HRR曲线,althougth正确分类使然系统之前可操作性需要的改进PCC大幅度的概率很低。在这项工作中,在通过ATR分类之前,将称为高清晰度向量成像(HDVI)的超分辨率技术应用于HRR配置文件。与使用传统图像处理技术的先前1-D ATR系统相比,使用超分辨率HRR的新1-D ATR系统显着提高了目标识别。本文讨论了在应用HDVI的雷达资源要求方面改善了HRR ATR性能。

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