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Scene Classification Based on the Fully Sparse Semantic Topic Model

机译:基于完全稀疏语义主题模型的场景分类

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In high spatial resolution (HSR) imagery scene classification, it is a challenging task to recognize the high-level semantics from a large volume of complex HSR images. The probabilistic topic model (PTM), which focuses on modeling topics, has been proposed to bridge the so-called semantic gap. Conventional PTMs usually model the images with a dense semantic representation and, in general, one topic space is generated for all the different features. However, this approach fails to consider the sparsity of the semantic representation, the classification quality, as well as the time consumption. In this paper, to solve the above problems, a fully sparse semantic topic model (FSSTM) framework is proposed for HSR imagery scene classification. FSSTM, with an elaborately designed modeling procedure, is able to represent the image with sparse but representative semantics. Based on this framework, the topic weights of multiple features are exploited by solving a concave maximization problem, which improves the fusion of the discriminative semantic information at the topic level. Meanwhile, the sparsity and representativeness of the topics generated by FSSTM guarantee that the image is adaptive to the change of a topic number. FSSTM can consistently achieve a good performance with a limited number of training samples, and is robust for HSR image scene classification. The experimental results obtained with three different types of HSR image data sets confirm that the proposed algorithm is effective in improving the performance of scene classification, and is highly efficient in discovering the semantics of HSR images when compared with the state-of-the-art PTM methods.
机译:在高空间分辨率(HSR)图像场景分类中,从大量复杂的HSR图像中识别高级语义是一项艰巨的任务。已经提出了以主题建模为重点的概率主题模型(PTM),以弥合所谓的语义鸿沟。常规的PTM通常使用密集的语义表示来对图像建模,并且通常为所有不同的特征生成一个主题空间。但是,这种方法没有考虑到语义表示的稀疏性,分类质量以及时间消耗。为了解决上述问题,提出了一种用于HSR图像场景分类的完全稀疏语义主题模型(FSSTM)框架。 FSSTM具有精心设计的建模程序,能够以稀疏但具有代表性的语义来表示图像。在此框架的基础上,通过解决凹最大化问题来利用多个特征的主题权重,从而在主题层次上提高了区分性语义信息的融合。同时,FSSTM生成的主题的稀疏性和代表性保证了图像可以适应主题编号的变化。 FSSTM可以在有限数量的训练样本下持续获得良好的性能,并且对于HSR图像场景分类具有鲁棒性。通过三种不同类型的HSR图像数据集获得的实验结果证实,与现有技术相比,该算法可有效提高场景分类的性能,并能高效地发现HSR图像的语义。 PTM方法。

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