Mobile Multi-View Object Image Search - Dataset


	Bilkent University Multimedia Database Group (BILMDG) 
Fatih Çalışır, Özgür Ulusoy, Uğur Güdükbay
Department of Computer Engineering, Bilkent University, Bilkent Muhammet Baştan
Department of Computer Engineering, Turgut Özal University, Kecioren
© 2015 ©, Ankara, Turkey

High user interaction capability of mobile devices can help improve the accuracy of mobile visual search systems. At query time, it is possible to capture multiple views of an object from different viewing angles and at different scales with the mobile device camera to obtain richer information about the object compared to a single view and hence return more accurate results. Motivated by this, we propose a new multi-view visual query model on multi-view object image databases for mobile visual search. Multi-view images of objects acquired by the mobile clients are processed and local features are sent to a server, which combines the query image representations with early/late fusion methods and returns the query results. We performed a comprehensive analysis of early and late fusion approaches using various similarity functions, on an existing single view and a new multi-view object image database. The experimental results show that multi-view search provides significantly better retrieval accuracy compared to traditional single view search.


Publications


Downloads



Last update: 03.03.2016