Spatial graphlet matching kernel for recognizing aerial image categories

ICPR(2012)

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摘要
This paper presents a method for recognizing aerial image categories based on matching graphlets(i.e., small connected subgraphs) extracted from aerial images. By constructing a Region Adjacency Graph (RAG) to encode the geometric property and the color distribution of each aerial image, we cast aerial image category recognition as RAG-to-RAG matching. Based on graph theory, RAG-to-RAG matching is conducted by matching all their respective graphlets. Towards an effective graphlet matching process, we develop a manifold embedding algorithm to transfer different-sized graphlets into equal length feature vectors and further integrate these feature vectors into a kernel. This kernel is used to train a SVM [8] classifier for aerial image categories recognition. Experimental results demonstrate our method outperforms several state-of-the-art object/scene recognition models.
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关键词
manifold embedding algorithm,color distribution,image matching,region adjacency graph,rag-to-rag matching,computational geometry,geometric property,svm classifier,aerial image category recognition,small connected subgraphs,feature extraction,image classification,support vector machine,geophysical image processing,object recognition,feature vectors,graph theory,support vector machines,image colour analysis,spatial graphlet matching kernel
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