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首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Support Vector Reduction in SVM Algorithm for Abrupt Change Detection in Remote Sensing
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Support Vector Reduction in SVM Algorithm for Abrupt Change Detection in Remote Sensing

机译:支持向量机支持向量机算法在遥感突变检测中的应用

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摘要

Satellite imagery classification using the support vector machine (SVM) algorithm may be a time-consuming task. This may lead to unacceptable performances for risk management applications that are very time constrained. Hence, methods for accelerating the SVM classification are mandatory. From the SVM decision function, it can be noted that the classification time is proportional to the number of support vectors (SVs) in the nonlinear case. In this letter, four different algorithms for reducing the number of SVs are proposed. The algorithms have been tested in the frame of a change detection application, which corresponds to a change-versus-no-change classification problem, based on a set of generic change criteria extracted from different combinations of remote sensing imagery.
机译:使用支持向量机(SVM)算法的卫星图像分类可能是一项耗时的任务。对于时间受限制的风险管理应用程序,这可能导致不可接受的性能。因此,用于加速SVM分类的方法是强制性的。从SVM决策函数可以看出,在非线性情况下,分类时间与支持向量(SV)的数量成正比。在这封信中,提出了四种减少SV数量的不同算法。这些算法已在变化检测应用程序的框架内进行了测试,该应用程序基于从遥感影像的不同组合中提取的一组通用变化标准,对应于变化与无变化分类问题。

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