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基于邻帧差分近邻反相特征的红外运动点目标检测算法
引用本文:朱风云,秦世引.基于邻帧差分近邻反相特征的红外运动点目标检测算法[J].中国航空学报,2006,19(3):225-232.
作者姓名:朱风云  秦世引
作者单位:School of Automation Science and Electrical Engineering, Beijing University of Aeronautics and Astronautics, Beijing 100083, China
摘    要:基于运动点目标在邻帧差分图像中所具有的近邻反相特征,即运动点目标的两个位置相邻近、灰度值一正一负,提出一种在复杂背景下,基于红外序列图像的运动点目标检测算法.本算法利用该特征在邻帧差分图像中检测反相点对,进而构造反相点对矢量图,最后依据累积反相点对矢量图中多矢量首位相接的连续性检测出运动的点目标.文中给出并证明应用本算法能以概率1检测到运动点目标的收敛性定理.对典型复杂背景下10幅1000帧图像的仿真结果表明,当信噪比大于或等于1.5时,可以有效检测出运动点目标.

关 键 词:模式识别  目标检测  点目标  邻帧差分图  近邻反相特征  pattern  recognition  target  detection  point  target  difference  image  RPFN
文章编号:1000-9361(2006)03-0225-08
收稿时间:2005-09-30
修稿时间:2006-04-21

A Moving IR Point Target Detection Algorithm Based on Reverse Phase Feature of Neighborhood in Difference between Neighbor Frame Images
ZHU Feng-yun,QIN Shi-yin.A Moving IR Point Target Detection Algorithm Based on Reverse Phase Feature of Neighborhood in Difference between Neighbor Frame Images[J].Chinese Journal of Aeronautics,2006,19(3):225-232.
Authors:ZHU Feng-yun  QIN Shi-yin
Institution:School of Automation Science and Electrical Engineering, Beijing University of Aeronautics and Astronautics, Beijing 100083, China
Abstract:An algorithm for detecting moving IR point target in complex background is proposed, which is based on the Reverse Phase Feature of Neighborhood (RPFN) of target in difference between neighbor frame images that two positions of the target in the difference image are near and the gray values of them are close to in absolute value but with inverse sign. Firstly, pairs of points with RPFN are detected in the difference image between neighbor frame images, with which a virtual vector graph is made, and then the moving point target can be detected by the vectors' sequence cumulated in vector graphs. In addition, a theorem for the convergence of detection of target contrail by this algorithm is given and proved so as to afford a solid guarantee for practical applications of the algorithm proposed in this paper. Finally, some simulation results with 1000 frames from 10 typical images in complex background show that moving point targets with SNR not lower than 1.5 can be detected effectively.
Keywords:pattern recognition  target detection  point target  difference image  RPFN
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