Asymmetric Feature Maps with Application to Sketch Based Retrieval

2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2017)

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摘要
We propose a novel concept of asymmetric feature maps (AFM), which allows to evaluate multiple kernels between a query and database entries without increasing the memory requirements. To demonstrate the advantages of the AFM method, we derive a short vector image representation that, due to asymmetric feature maps, supports efficient scale and translation invariant sketch-based image retrieval. Unlike most of the short-code based retrieval systems, the proposed method provides the query localization in the retrieved image. The efficiency of the search is boosted by approximating a 2D translation search via trigonometric polynomial of scores by 1D projections. The projections are a special case of AFM. An order of magnitude speed-up is achieved compared to traditional trigonometric polynomials. The results are boosted by an image-based average query expansion, exceeding significantly the state of the art on standard benchmarks.
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关键词
AFM method,short vector image representation,asymmetric feature maps,translation invariant sketch-based image retrieval,2D translation search,trigonometric polynomial,query localization,1D projections,image-based average query expansion,database entries,short-code based retrieval systems
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