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A support vector domain method for change detection in multitemporal images

机译:一种支持向量域的多时相图像变化检测方法

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摘要

This paper formulates the problem of distinguishing changed from unchanged pixels in multitemporal remote sensing images as a minimum enclosing ball (MEB) problem with changed pixels as target class. The definition of the sphere-shaped decision boundary with minimal volume that embraces changed pixels is approached in the context of the support vector formalism adopting a support vector domain description (SVDD) one-class classifier. SVDD maps the data into a high dimensional feature space where the spherical support of the high dimensional distribution of changed pixels is computed. Unlike the standard SVDD, the proposed formulation of the SVDD uses both target and outlier samples for defining the MEB, and is included here in an unsupervised scheme for change detection. To this purpose, nearly certain training examples for the classes of both targets (i.e., changed pixels) and outliers (i.e., unchanged pixels) are identified by thresholding the magnitude of the spectral change vectors. Experimental results obtained on two different multitemporal and multispectral remote sensing images demonstrate the effectiveness of the proposed method.
机译:本文提出了将多时相遥感影像中的未变化像素与未变化像素区分开来的问题,作为以像素变化为目标类别的最小包围球(MEB)问题。在采用支持向量域描述(SVDD)一类分类器的支持向量形式主义的背景下,对具有最小体积的球形决策边界进行定义,该边界包含变化的像素。 SVDD将数据映射到高维特征空间,在该空间中计算变化像素的高维分布的球形支撑。与标准SVDD不同,建议的SVDD公式同时使用目标样本和异常样本来定义MEB,并且此处将其包括在用于变更检测的无监督方案中。为此,通过阈值化频谱变化矢量的大小来识别针对目标(即,改变后的像素)和离群值(即,未改变的像素)的类别的几乎某些训练示例。在两个不同的多时相和多光谱遥感图像上获得的实验结果证明了该方法的有效性。

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