基于高分辨率遥感影像邻域分类的可扩展机器学习方法

M. Sethi, Yupeng Yan, Anand Rangarajan, Ranga Raju Vatsavai, S. Ranka
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引用次数: 17

摘要

使用甚高分辨率(VHR)遥感图像进行城市邻里分类是一项具有挑战性和新兴的应用。提出了一种利用VHR图像的超像素镶嵌表示进行邻域识别的半监督学习方法。图像表示利用称为超像素的均匀和不规则形状的区域,并基于强度直方图,几何形状,角和超像素密度以及镶嵌规模派生出新的特征。半监督学习方法使用支持向量机(SVM)获得初步分类,然后使用图拉普拉斯传播进行改进。介绍了管道中的几个中间阶段,以展示该方法的重要特性。我们在四种不同的地理环境中评估了这种方法,并将其与最近的高斯多元学习算法进行了比较。该评估显示了几个优点,包括模型构建、准确性和效率,这使得它成为部署在大规模应用程序(如全球人类住区测绘和人口分布(例如LandScan))和变化检测中的一个很好的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable Machine Learning Approaches for Neighborhood Classification Using Very High Resolution Remote Sensing Imagery
Urban neighborhood classification using very high resolution (VHR) remote sensing imagery is a challenging and {\em emerging} application. A semi-supervised learning approach for identifying neighborhoods is presented which employs superpixel tessellation representations of VHR imagery. The image representation utilizes homogeneous and irregularly shaped regions termed superpixels and derives novel features based on intensity histograms, geometry, corner and superpixel density and scale of tessellation. The semi-supervised learning approach uses a support vector machine (SVM) to obtain a preliminary classification which is then subsequently refined using graph Laplacian propagation. Several intermediate stages in the pipeline are presented to showcase the important features of this approach. We evaluated this approach on four different geographic settings with varying neighborhood types and compared it with the recent Gaussian Multiple Learning algorithm. This evaluation shows several advantages, including model building, accuracy, and efficiency which makes it a great choice for deployment in large scale applications like global human settlement mapping and population distribution (e.g., LandScan), and change detection.
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