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Statistical moments based methods for detecting sub-pixel target tracks in large image sequences

机译:基于统计矩的大图像序列中亚像素目标轨迹检测方法

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This paper reviews and compares the performance of several methods to detect target tracks in image sequences. The targets are assumed to be sub-pixel or not resolved by the imaging system, and moving over a static background. To process the resulting large amount of data requires simple, fast and robust processing methods to quickly find and display tracks of moving targets in a single image. An object moving through a pixel in a scene will momentarily perturb the pixel intensity signal, introducing a change of both skewness and kurtosis in the intensity histogram relative to an undisturbed pixel. Numerical experiments show that for Gaussian and Poisson distributed system noise higher order moments (>2) perform better than second order detectors.
机译:本文回顾并比较了几种检测图像序列中目标轨迹的方法的性能。假定目标是亚像素或成像系统未解析,并在静态背景上移动。为了处理由此产生的大量数据,需要简单,快速和强大的处理方法,以在单个图像中快速找到并显示运动目标的轨迹。穿过场景中像素的对象将立即干扰像素强度信号,从而相对于未受干扰的像素在强度直方图中引入偏度和峰度的变化。数值实验表明,对于高斯和泊松分布式系统噪声,高阶矩(> 2)的性能优于二阶检测器。

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