Authors
Xiaohui Shen, Zhe Lin, Jonathan Brandt, Shai Avidan, Ying Wu
Publication date
2012/6/16
Conference
2012 IEEE Conference on Computer Vision and Pattern Recognition
Pages
3013-3020
Publisher
IEEE
Description
One fundamental problem in object retrieval with the bag-of-visual words (BoW) model is its lack of spatial information. Although various approaches are proposed to incorporate spatial constraints into the BoW model, most of them are either too strict or too loose so that they are only effective in limited cases. We propose a new spatially-constrained similarity measure (SCSM) to handle object rotation, scaling, view point change and appearance deformation. The similarity measure can be efficiently calculated by a voting-based method using inverted files. Object retrieval and localization are then simultaneously achieved without post-processing. Furthermore, we introduce a novel and robust re-ranking method with the k-nearest neighbors of the query for automatically refining the initial search results. Extensive performance evaluations on six public datasets show that SCSM significantly outperforms other spatial …
Total citations
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Scholar articles
X Shen, Z Lin, J Brandt, S Avidan, Y Wu - 2012 IEEE Conference on Computer Vision and …, 2012