SVS-JOIN: Efficient Spatial Visual Similarity Join over Multimedia Data
Abstract
In the big data era, massive amount of multimedia data with geo-tags has been generated and collected by mobile smart devices equipped with mobile communications module and position sensor module. This trend has put forward higher request on large-scale of geo-multimedia data retrieval. Spatial similarity join is one of the important problem in the area of spatial database. Previous works focused on textual document with geo-tags, rather than geo-multimedia data such as geo-images. In this paper, we study a novel search problem named spatial visual similarity join (SVS-JOIN for short), which aims to find similar geo-image pairs in both the aspects of geo-location and visual content. We propose the definition of SVS-JOIN at the first time and present how to measure geographical similarity and visual similarity. Then we introduce a baseline inspired by the method for textual similarity join and a extension named SVS-JOIN which applies spatial grid strategy to improve the efficiency. To further improve the performance of search, we develop a novel approach called SVS-JOIN which utilizes a quadtree and a global inverted index. Experimental evaluations on real geo-image datasets demonstrate that our solution has a really high performance.
Cite
@article{arxiv.1810.00549,
title = {SVS-JOIN: Efficient Spatial Visual Similarity Join over Multimedia Data},
author = {Chengyuan Zhang and Ruipeng Chen and Lei Zhu and Zuping Zhang and Fang Huang and Yunwu Lin},
journal= {arXiv preprint arXiv:1810.00549},
year = {2018}
}
Comments
25 pages