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Adaptive Automatic Target Recognition with SVM Boosting for Outlier Detection

机译:具有SVM增强功能的自适应自动目标识别,可用于异常值检测

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摘要

This paper is concerned with the detection of dim targets in cluttered image sequences. It is an extension of our previous work in which we viewed target detection as an outlier detection problem. In that work the background was modelled by a uni-modal Gaussian. In this paper a Gaussian mixture-model is used to describe the background in which the the number of components is automatically selected. As an outlier does not automatically imply a target, a final stage has been added in which all points below a set density function value are passed to a support vector classifier to be identified as a target or background. This system is compared favourably to a baseline technique.
机译:本文涉及杂乱图像序列中暗目标的检测。这是我们先前工作的扩展,在该工作中,我们将目标检测视为异常检测问题。在那部作品中,背景是由单峰高斯建模的。在本文中,使用高斯混合模型来描述自动选择组分数量的背景。由于异常值不会自动暗示目标,因此添加了最后阶段,其中将低于设置的密度函数值的所有点传递到支持向量分类器,以将其识别为目标或背景。该系统与基线技术相比具有优势。

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