空间变化杂波中的点目标检测

S. Sridhar, G. Healey
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引用次数: 3

摘要

作者开发并分析了具有空间变化杂波的红外图像中点目标的高速检测算法。目前的目标检测系统能够有效地检测出均匀天空中的明亮目标,但在强杂波区域,要么无法可靠地检测出目标,要么受到高虚警率的限制。作者假设目标和传感器模型是可用的。杂波被认为是特征差和空间变化的。目标检测算法是基于滤波来增强相对于背景的目标信号,然后是自适应阈值。对算法进行了统计分析,量化了算法的性能。该系统实现了一种空间自适应算法,在保持固定虚警率的同时最大限度地提高目标检测概率。该算法在空间变化的杂波存在下具有鲁棒性。作者包括实验结果来说明这一点
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Point target detection in spatially varying clutter
The authors develop and analyze high-speed algorithms for the detection of point targets in infrared (IR) images with spatially varying clutter. Current target detection systems are effective in detecting bright targets in a uniform sky, but in areas of strong clutter are either unable to detect targets reliably or are limited by high false alarm rates. The authors assume that target and sensor models are available. Clutter is considered to be poorly characterized and spatially varying. Target detection algorithms are based on filtering to enhance the target signal relative to the background, followed by an adaptive threshold. Statistical analysis of the algorithms is provided to quantify algorithm performance. The system implements a spatially adaptive algorithm that maximizes probability of target detection while maintaining a fixed false alarm rate. The algorithms are robust in the presence of spatially varying clutter. The authors include experimental results to illustrate this.<>
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