An Improved Offline Stable Point Filtering Method for Mobile Search Application

Wuhan(2009)

引用 0|浏览7
暂无评分
摘要
Mobile visual search business has been prospering since research break-through on content based image retrieval (CBIR) and continuous improving mobile technology. In such search application, user takes photo and uploads photo to server. Retrieval is done at the server side and user gets result from the server. Currently search applications have difficulties. 1) Mobile photos have relatively low qualities, and photos contain various affine transforms. The two drawbacks will influence the retrieval accuracy. 2) Retrieval speed and accuracy could not meet a balance for large scale database. Current index mechanism for high dimensional local feature such as SIFT is not fast enough while lots of low dimensional feature cannot ensure high accuracy. This paper proposes a fully-automated offline stable point filtering method for mobile visual search application. We use various transforms to simulate effects caused by mobile photo images. They are processed in our offline method to reduce the index size of the retrieval application. Experiments show that with proper offline processing, 13.83% memory or disk space could be saved when retrieval application loads SIFT features into memory for LSH at the online stage while application still maintains a high query accuracy.
更多
查看译文
关键词
mobile search application,tow-view segmentation,retrieval accuracy,visual databases,mobile photo images,mobile visual search business,cbir,continuous improving mobile technology,fully-automated offline stable point filtering,image retrieval,content based image retrieval,stable point,improved offline stable point filtering,large scale database,mobile photos,affine transforms,index mechanism,mobile computing,content-based retrieval,high dimensional local feature,retrieval speed,simulated affine transform,filtering,indexes,affine transformation,indexation,mobile communication,feature extraction,visual search,accuracy,mobile technology
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