Edge-SIFT: discriminative binary descriptor for scalable partial-duplicate mobile search.

IEEE Transactions on Image Processing(2013)

引用 92|浏览60
暂无评分
摘要
As the basis of large-scale partial duplicate visual search on mobile devices, image local descriptor is expected to be discriminative, efficient, and compact. Our study shows that the popularly used histogram-based descriptors, such as scale invariant feature transform (SIFT) are not optimal for this task. This is mainly because histogram representation is relatively expensive to compute on mobile platforms and loses significant spatial clues, which are important for improving discriminative power and matching near-duplicate image patches. To address these issues, we propose to extract a novel binary local descriptor named Edge-SIFT from the binary edge maps of scale- and orientation-normalized image patches. By preserving both locations and orientations of edges and compressing the sparse binary edge maps with a boosting strategy, the final Edge-SIFT shows strong discriminative power with compact representation. Furthermore, we propose a fast similarity measurement and an indexing framework with flexible online verification. Hence, the Edge-SIFT allows an accurate and efficient image search and is ideal for computation sensitive scenarios such as a mobile image search. Experiments on a large-scale dataset manifest that the Edge-SIFT shows superior retrieval accuracy to Oriented BRIEF (ORB) and is superior to SIFT in the aspects of retrieval precision, efficiency, compactness, and transmission cost.
更多
查看译文
关键词
retrieval precision,mobile image search,mobile platform,histogram-based descriptor,image representation,large-scale partial duplicate visual search,image local descriptor,scale invariant feature transform,image matching,mobile device,sparse binary edge map,discriminative binary descriptor,indexing framework,orb,discriminative power,edge-sift,retrieval efficiency,indexing,retrieval compactness,edge orientation,scalable partial-duplicate mobile search,retrieval transmission cost,scale-normalized image patches,mobile radio,binary local descriptor,image retrieval,edge detection,spatial clue,edge location,similarity measurement,near-duplicate image patch matching,large-scale image search,mobile vision,histogram representation,oriented brief,flexible online verification,orientation-normalized image patches,boosting strategy,mobile computing,materials,mobile communication,visualization
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要