基于粗到细斑块的高分辨率卫星图像多时相分析

S. Cui, M. Datcu
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引用次数: 8

摘要

提出了一种基于patch的高分辨率图像多时相分析方法。传统上,在像素水平上进行的多时相分析受到一些限制,例如,配准,双时相分析。为了克服这些限制,提出了两种斑块水平的多时相分析方法。一种是对时间序列数据进行变化检测,将整个序列中沿时间轴的所有补丁对分为两类。用于分类的特征是基于局部统计模型和局部模式直方图的相似性度量。另一种是针对长图像时间序列的演化分析。为了描述演化模式,从时间序列数据中提取时空局部模式特征。ν-支持向量机(ν-SVM)在patch级别对不同类型的进化进行分类。性能评估基于迭代分类产生的数据库。
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Coarse to fine patches-based multitemporal analysis of very high resolution satellite images
In this paper, a patch based method for multi-temporal analysis of high resolution image is proposed. Conventionally, multi-temporal analysis performed at pixel level suffer from several restrictions, e.g., registration, bi-temporal analysis. To overcome these restrictions, two methods for multi-temporal analysis are proposed at patch level. One is for change detection in time series data by classifying all pairs of patches along time axis in the whole sequence into two classes. Features used for classification are similarity measures based on local statistical models and histogram of local patterns. The other aims at evolution analysis in long image time series. To characterize the evolution patterns, spatio-temporal local pattern features are extracted from time series data. ν-support vector machine (ν-SVM) is applied to classify different kinds of evolution at patch level. Performance is evaluated based on our database produced by iterative classification.
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