Spatial descriptor embedding for near-duplicate image retrieval Online publication date: Wed, 16-May-2018
by Yunlong Wang; Zhili Zhou
International Journal of Embedded Systems (IJES), Vol. 10, No. 3, 2018
Abstract: The existing methods for near-duplicate image retrieval are mostly dependent on the bag-of-words (BOW) model. However, the procedure of quantisation to the low discrimination of visual words causes many false local matches. In this paper, we propose a novel spatial descriptor embedding method for near-duplicate image retrieval, which encodes the relationship of the SIFT dominant orientation and the exact spatial position between local features and their context to be spatial descriptors, and then embeds them in the index to improve the distinctiveness of visual words. Moreover, a secondary matching structure for spatial descriptors matching is used to effectively and efficiently implement the near-duplicate image retrieval. Experimental results on Copydays illustrate that our method achieves superior performance to the state of art methods.
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