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Small Target Detection Utilizing Robust Methods of the Human Visual System for IRST

机译:利用人眼视觉系统的鲁棒方法进行小目标检测

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摘要

Robust detection of small targets is very important in IRST (Infrared Search and Track). This paper presents a novel mathematical method for the incoming target detection problem in cluttered background motivated from the robust properties of human visual system (HVS). The HVS shows the best efficiency and robustness for an object detection task. The robust properties of the HVS are contrast mechanism, multi-resolution representation, size adaptation, and pop-out phenomena. Based on these facts, a plausible computational model integrating these facts is proposed using Laplacian scale-space theory and Tune-Max based optimization method. Simultaneous target signal enhancement and background clutter suppression is achieved by tuning and maximizing the signal-to-clutter ratio (TMSCR) in Laplacian scale-space. At the first stage, the Tune-Max of the signal to background contrast produces candidate targets with adapted scale. At the second stage, the Tune-Max of the signal-to-clutter ratio (SCR) produces maximal SCR which is used to pop-out detections. Experimental evaluation results for the incoming target sequence validate the upgraded detection capability of the proposed method compared with the Top-hat method at the same false alarm rate. Experimental results for the six kinds of cluttered background images show that the proposed TMSCR produces less false alarms (4.3 times reduction) compared to the Top-hat at the same detection rate.
机译:在IRST(红外搜索和跟踪)中,小目标的鲁棒检测非常重要。本文针对人类视觉系统(HVS)的鲁棒性,提出了一种在杂乱背景中解决目标进入问题的新数学方法。 HVS显示出用于对象检测任务的最佳效率和鲁棒性。 HVS的强大特性是对比度机制,多分辨率表示,尺寸适应和弹出现象。基于这些事实,使用拉普拉斯尺度空间理论和基于Tune-Max的优化方法,提出了一个综合了这些事实的合理计算模型。通过调整和最大化拉普拉斯比例空间中的信杂比(TMSCR),可以同时实现目标信号增强和背景杂波抑制。在第一阶段,信号与背景对比的Tune-Max会产生具有合适比例的候选目标。在第二阶段,信噪比(SCR)的Tune-Max产生最大SCR,用于弹出检测。在相同的误报率下,输入目标序列的实验评估结果证明了与Top-hat方法相比,该方法具有更高的检测能力。六种杂乱背景图像的实验结果表明,与相同检测率的高顶礼帽相比,拟议的TMSCR产生的假警报更少(减少了4.3倍)。

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