首页> 外文会议>Conference on Algorithms for Synthetic Aperture Radar Imagery X Apr 21-23, 2003 Orlando, Florida, USA >The Effects of SAR Parametric Variations on the Performance of Automatic Target Recognition Algorithms
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The Effects of SAR Parametric Variations on the Performance of Automatic Target Recognition Algorithms

机译:SAR参数变化对目标自动识别算法性能的影响

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Synthetic aperture radar (SAR) imagery is one of the most valuable sensor data sources for today's military battlefield surveillance and analysis. The collection of SAR images by various platforms (e.g. Global Hawk, NASA/JPL AIRSAR, etc.) and on various missions for multiple purposes (e.g. reconnaissance, terrain mapping, etc.) has resulted in vast amount of data over wide surveillance areas. The pixel-to-eye ratio is simply too high for human analysts to rapidly sift through massive volumes of sensor data and yield engagement decisions quickly and precisely. Effective automatic target recognition (ATR) algorithms to process this growing mountain of information are clearly needed. However, even after many years of research, SAR ATR still remains a highly challenging research problem. What makes SAR ATR problems difficult is the amount of variability exhibited in the SAR image signatures of targets and clutters. There are many different factors that can cause the variability in SAR image signatures. It is of convention to categorizes those factors into three major groups known as extended operating conditions (OC's) of target, environment and sensor. The group of sensor OC's includes SAR sensor parametric variations in depression angle, polarization, squint angle, frequencies (UHF, VHF, X band) and bandwidth, pulse repetition frequency (PRF), multi-look, antenna geometry and type, image formation algorithms, platform variations and geometric errors, noise level, etc. Many existing studies of SAR, ATR have been traditionally focused on the variability of SAR signatures caused by a sub-space of target OC's and environment OC's. The similar studies in terms of SAR parametric variations in sensor OC's have been very limited due to the lack of data across the sensor OC's and the inherent difficulties as well as the high cost in supplying various sensor OC's during the data collections. This paper will present the results of a comprehensive survey of SAR ATR research works involving the subjects of various sensor OC's. We found out in the survey that, to this date, very few research has been devoted to the problems of sensor OC's and their effects over the performance of SAR image based ATR algorithms. Due to the importance of sensor OC's in the ATR applications, we have developed a research platform as well as important focus areas of future research in SAR parametric variations. A number of baseline ATR algorithms in the research platform have been implemented and verified. We have also planned and started SAR data simulation process across the spectrum of sensor OC's. A road-map for the future research of SAR parametric variations (sensor OC's) and their impact on ATR algorithms is laid out in this paper.
机译:合成孔径雷达(SAR)图像是当今军事战场监视和分析中最有价值的传感器数据源之一。通过各种平台(例如Global Hawk,NASA / JPL AIRSAR等)以及出于多种目的(例如侦察,地形图等)执行各种任务而收集的SAR图像已在广阔的监视区域内产生了大量数据。像素对眼睛的比例太高了,人类分析人员无法快速筛选大量的传感器数据,并无法快速,准确地做出参与决策。显然需要有效的自动目标识别(ATR)算法来处理不断增长的信息。但是,即使经过多年的研究,SAR ATR仍然是一个极具挑战性的研究问题。使SAR ATR问题变得困难的是目标和杂波的SAR图像签名中表现出的可变性。有许多不同的因素会导致SAR图像签名的变化。按照惯例,将这些因素分为三大类,即目标,环境和传感器的扩展操作条件(OC)。传感器OC组包括SAR传感器参数变化,包括俯角,极化,斜视角,频率(UHF,VHF,X波段)和带宽,脉冲重复频率(PRF),多视点,天线几何形状和类型,图像形成算法,平台变化和几何误差,噪声水平等。SAR,ATR的许多现有研究传统上都集中在目标OC和环境OC的子空间引起的SAR签名的可变性上。由于缺少传感器OC上的数据,固有的困难以及在数据收集期间提供各种传感器OC的高昂成本,因此传感器OC中的SAR参数变化方面的类似研究非常有限。本文将介绍SAR ATR研究工作的全面调查结果,该研究涉及各种传感器OC的主题。我们在调查中发现,到目前为止,很少有研究致力于传感器OC的问题及其对基于SAR图像的ATR算法性能的影响。由于传感器OC在ATR应用中的重要性,我们开发了一个研究平台以及SAR参数变化的未来研究的重要重点领域。研究平台中的许多基准ATR算法已得到实施和验证。我们还计划并开始了跨传感器OC频谱的SAR数据仿真过程。本文提出了SAR参数变化(传感器OC)及其对ATR算法的影响的未来研究路线图。

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