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A CHANGE DETECTION METHOD FOR REMOTE SENSING IMAGE BASED ON MULTI-FEATURE DIFFERENCING KERNEL SVM

机译:基于多特征差异核心SVM的遥感图像的变化检测方法

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Based on the support vector machine (SVM) tools and multiple kernel method, the combinations of kernel functions were mainly discussed. The construction method of image differencing kernel with multi-feature (spectral feature and textural feature) has been developed. Through this method and weighting of the categories' samples, the improved SVM change detection model has been proposed, which could realize the direct extraction of spatial distribution information from several change classes. From the experiments we can draw the following conclusions: with the help of multiple kernel function integrating spectral features and texture information, the new change detection model can achieve higher detection accuracy than the traditional methods and is suitable for the small-sample experiment. Furthermore, it avoids the complex and uncertainty in determining change threshold required in the old detection methods.
机译:基于支持向量机(SVM)工具和多个内核方法,主要讨论了内核功能的组合。已经开发了具有多特征(光谱特征和纹理特征的图像差异内核的施工方法。通过该方法和类别的样本的加权,已经提出了改进的SVM改变检测模型,这可以实现来自几种变化类的空间分布信息的直接提取。从实验来看,我们可以得出以下结论:借助多个内核功能集成光谱特征和纹理信息,新的变更检测模型可以实现比传统方法更高的检测精度,并且适用于小样本实验。此外,它避免了在确定旧检测方法所需的变化阈值时避免复杂和不确定性。

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