具有一般点扩散函数的焦平面阵列最大似然检测(海报)

K. Kiani, B. Balasingam, B. Shahrrava
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引用次数: 0

摘要

本文研究了焦平面阵列(FPA)图像上的目标检测问题。该方法可应用于生物医学系统、自主监控系统、目标跟踪系统和机器人。在先前的Fusion会议上的一篇论文中,在目标的点扩散函数为严格圆形的假设下,解决了FPA上单点目标的检测问题。本文提出的方法是对一般点扩散函数结果的扩展,更适用于实际问题的求解。本文导出了用于图像观测的最大似然(ML)目标检测器;在FPA包含单个目标的通用假设下,所提出的ML检测器是最优的,该目标以已知协方差矩阵的高斯信号强度的形式存在。在此基础上,推导了估计的Cramer-Rao下界(CRLB),并通过假设检验找到了目标接受度的阈值。最后,从理论上推导出探测器的接收机工作特性(ROC)曲线。仿真结果表明,机器学习估计器是有效的,并且在很低的信噪比值下,理论推导的ROC非常接近实际的ROC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maximum Likelihood Detection in Focal Plane Arrays with Generic Point Spread Function (Poster)
In this paper the problem of target detection on images and focal plane arrays (FPA) is considered. The proposed approach has applications in biomedical systems, autonomous surveillance systems, target tracking systems and robotics. In a previous paper at the Fusion conference the problem of single, point target detection on FPA was solved under the assumption that the point spread function of the target is strictly circular. The proposed approach in this paper extends the previous result for a generic point spread function that is more applicable to solve practical problems. In this paper, we derive the maximum likelihood (ML) target detector for image observations; the proposed ML detector is optimal under the generic assumption that the FPA contains a single target that is in the form of a Gaussian signal intensity with known covariance Matrix. Further, we derive the Cramer-Rao lower bound (CRLB) of the estimation and then present the hypothesis test to find a threshold for target acceptance. Finally, we theoretically derive the receiver operating characteristic (ROC) curve of the detector. Simulation results show that the ML estimator is efficient and that the theoretically derived ROC is a close approximation to the realistic one at very low signal to noise ratio values.
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