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A High Spatial Resolution Remote Sensed Imagery Classification Algorithm Using Multiscale Morphological Profiles and SVM

机译:基于多尺度形态学特征和支持向量机的高分辨率遥感影像分类算法

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The availability of high-resolution (HR) remote sensing multispectral imagery brings opportunities and challenges for land cover classification. The methodology of multiscale segmentation is wildly accepted for feature extraction and classification in HR image. However, the relationship among chosen scale parameters, selected features, and classification accuracy is less considered. A classification approach combining the hierarchy segment algorithm and SVM is presented in this paper. Firstly, a family of nested image partitions with ascending region areas is constructed by iteratively merging procedure; Then, multiscale morphological features are extracted in every segmentation level; Finally, the classification accuracy in different scales are compared and analyzed. The experiments shown that a more conservative scale parameter benefits land cover classification algorithm and different land objects has different optimal scale for classification.
机译:高分辨率(HR)遥感多光谱图像的可用性为土地覆被分类带来了机遇和挑战。多尺度分割方法已被广泛接受用于HR图像的特征提取和分类。但是,很少考虑所选比例参数,所选特征和分类精度之间的关系。提出了一种结合层次分割算法和支持向量机的分类方法。首先,通过迭代合并过程构造了一个具有递增区域区域的嵌套图像分区族。然后,在每个分割级别中提取多尺度形态特征。最后,对不同尺度下的分类精度进行了比较和分析。实验表明,较为保守的尺度参数有利于土地覆被分类算法,不同的土地物体具有不同的最优尺度进行分类。

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