Using Earth Mover's Distance in the Bag-of-Visual-Words Model for Mathematical Symbol Retrieval

Document Analysis and Recognition(2011)

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摘要
In this paper, the Earth Mover's Distance (EMD) is used as a similarity measure in the mathematical symbol retrieval task. The approach is based on the Bag-of-Visual-Words model. In our case the features extracted from each symbol are clustered by means of Self-Organizing Maps (SOM) and then occurrences of features in the clusters are accumulated in a vector of visual words. The comparison between the latter vectors is performed with the EMD which naturally allows to incorporate the topological organization of SOM clusters in the distance computation. The proposed approach is experimentally tested in a mathematical symbol retrieval task and compared with the cosine similarity and with some variants that have been recently proposed.
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关键词
distance computation,bag-of-visual-words model,mathematical symbol retrieval task,latter vector,cosine similarity,mathematical symbol retrieval,similarity measure,self-organizing maps,earth mover,som cluster,earth mover s distance,euclidean distance,indexing,self organizing map,shape,bag of visual words,information retrieval,vectors,earth,feature extraction,topology
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