Title :
Lightweight sign recognition for mobile devices
Author :
Fornaciari, Michele ; Prati, Andrea ; Grana, Costantino ; Cucchiara, Rita
Author_Institution :
DIEF, Univ. of Modena & Reggio Emilia, Modena, Italy
Abstract :
The diffusion of powerful mobile devices has posed the basis for new applications implementing on the devices (which are embedded devices) sophisticated computer vision and pattern recognition algorithms. This paper describes the implementation of a complete system for automatic recognition of places localized on a map through the recognition of significant signs by means of the camera of a mobile device (smartphone, tablet, etc.). The paper proposes a novel classification algorithm based on the innovative use of bag-of-words on ORB features. The recognition is achieved using a simple yet effective search scheme which exploits GPS localization to limit the possible matches. This simple solution brings several advantages, such as the speed also on limited-resource devices, the usability also with limited training samples and the easiness of adapting to new training samples and classes. The overall architecture of the system is based on a REST-JSON client-server architecture. The experimental results have been conducted in a real scenario and evaluating the different parameters which influence the performance.
Keywords :
Global Positioning System; cameras; cartography; client-server systems; computer vision; image classification; mobile computing; GPS localization; ORB features; REST-JSON client-server architecture; automatic place recognition; bag-of-words; camera; classification algorithm; computer vision algorithm; lightweight sign recognition; limited-resource devices; map; mobile devices; pattern recognition algorithm; search scheme; Computer architecture; Hamming distance; Histograms; Mobile handsets; Servers; Training; Vectors;
Conference_Titel :
Distributed Smart Cameras (ICDSC), 2013 Seventh International Conference on
Conference_Location :
Palm Springs, CA
DOI :
10.1109/ICDSC.2013.6778220