Inexact graph matching based on kernels for object retrieval in image databases

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摘要

In the framework of online object retrieval with learning, we address the problem of graph matching using kernel functions. An image is represented by a graph of regions where the edges represent the spatial relationships. Kernels on graphs are built from kernel on walks in the graph. This paper firstly proposes new kernels on graphs and on walks, which are very efficient for graphs of regions. Secondly we propose fast solutions for exact or approximate computation of these kernels. Thirdly we show results for the retrieval of images containing a specific object with the help of very few examples and counter-examples in the framework of an active retrieval scheme.

论文关键词:Online,Interactive,Database,Content-based,Object retrieval,Image retrieval,Machine learning,Kernel methods,Graph matching,Inexact match

论文评审过程:Received 3 August 2009, Revised 21 July 2011, Accepted 29 July 2011, Available online 18 August 2011.

论文官网地址:https://doi.org/10.1016/j.imavis.2011.07.008