首页> 外文会议>Information and Automation, 2009. ICIA '09 >Adaptive Method for Infrared Small Target Detection Based on Gray-Scale Morphology and Backward Cumulative Histogram Analysis
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Adaptive Method for Infrared Small Target Detection Based on Gray-Scale Morphology and Backward Cumulative Histogram Analysis

机译:基于灰度形态学和后向累积直方图分析的红外小目标自适应检测方法

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The small target detection in infrared image sequences is a fundamental step in the process of infrared search and tracking systems. This paper proposes a fast and adaptive method for infrared small target detection using gray-scale morphology and backward cumulative histogram analysis of the image. The proposed algorithm consists of five phases. Firstly, the perceptually insignificant large image background regions are removed using gray-scale morphology processing. Then, we generate backward cumulative histogram of the image after background elimination. To smooth noisy data, the backward cumulative histogram profile is fitted by a low order polynomial. Thirdly, the lower limit of the threshold that best extracts small targets is obtained based on dynamic analysis of the derivative curve of fitted low-order polynomial. Fourthly, optimal threshold is selected based on reasonable range of the threshold and constant false alarm rate. Finally, false targets are further removed by modified multi-frame data association. Experimental results show that our proposed method obtains very high detection rate and extremely low false alarm rate.
机译:红外图像序列中的小目标检测是红外搜索和跟踪系统过程中的基本步骤。本文提出了一种快速,自适应的红外小目标检测方法,该方法利用灰度形态学和图像的后向累积直方图分析。所提出的算法包括五个阶段。首先,使用灰度形态学处理去除在视觉上不明显的大图像背景区域。然后,我们在消除背景后生成图像的后向累积直方图。为了平滑嘈杂的数据,通过低阶多项式拟合后向累积直方图轮廓。第三,通过对拟合的低阶多项式的导数曲线进行动态分析,得出最佳提取小目标的阈值下限。第四,基于合理的阈值范围和恒定的误报率选择最优阈值。最后,通过修改的多帧数据关联进一步消除了错误的目标。实验结果表明,该方法具有很高的检测率和极低的误报率。

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