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A Multiscale Latent Dirichlet Allocation Model for Object-Oriented Clustering of VHR Panchromatic Satellite Images

机译:VHR全色卫星图像面向对象聚类的多尺度潜在Dirichlet分配模型

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摘要

A novel model is presented to address the problem of semantic clustering of geo-objects in very high resolution panchromatic satellite images. The proposed model combines a probabilistic topic model with a multiscale image representation into an automatic framework by embedding both document and scale selections. The probabilistic topic model is used to characterize the statistical distributions of both intraclass appearance and inter-class coherence of geo-objects within documents, i.e., squared sub-images. Because the bag-of-words assumption involved in the probabilistic topic models does not consider the spatial coherence between topic labels, the multiscale image representation is designed to provide a self-adaptive spatial regularization for various geo-object categories. By introducing scale and document selections, the automatic framework integrates the probabilistic topic model and the multiscale image representation to ensure that words on a site should be allocated the same topic label no matter what documents they reside in. Consequently, unlike the traditional method of applying topic models for analyzing satellite images, the process of explicitly generating a set of documents before modeling and then combining multiple labels for a word on a given site is unnecessary. Gibbs sampling is adopted for parameter estimation and image clustering. Extensive experimental evaluations are designed to first analyze the effect of parameters in the proposed model and then compare the results of our model with those of some state-of-the-art methods for three different types of images. The results indicate that the proposed algorithm consistently outperforms these exiting state-of-the-art methods in all of the experiments.
机译:提出了一种新颖的模型来解决超高分辨率全色卫星图像中地理对象的语义聚类问题。通过嵌入文档和比例尺选择,提出的模型将概率主题模型与多比例图像表示结合到一个自动框架中。概率主题模型用于表征文档内的地理对象的类内外观和类间相干性的统计分布,即子图像平方。由于概率主题模型中涉及的词袋假设不考虑主题标签之间的空间连贯性,因此设计多尺度图像表示可为各种地理对象类别提供自适应的空间正则化。通过引入比例和文档选择,自动框架将概率主题模型和多比例图像表示形式集成在一起,以确保无论站点上所驻留的文档是什么文档,都应该为站点上的单词分配相同的主题标签。因此,与传统的申请方法不同用于分析卫星图像的主题模型,不需要在建模之前显式生成一组文档,然后组合给定站点上单词的多个标签的过程。 Gibbs采样用于参数估计和图像聚类。设计了广泛的实验评估,以首先分析所提出模型中的参数效果,然后将我们的模型结果与针对三种不同类型图像的一些最新方法的结果进行比较。结果表明,在所有实验中,所提出的算法始终优于这些现有的最新技术方法。

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