TY - GEN
T1 - Indoor place recognition using online independent support vector machines
AU - Orabona, Francesco
AU - Castellini, Claudio
AU - Caputo, Barbara
AU - Luo, Jie
AU - Sandini, Giulio
N1 - Generated from Scopus record by KAUST IRTS on 2023-09-25
PY - 2007/1/1
Y1 - 2007/1/1
N2 - In the framework of indoor mobile robotics, place recognition is a challenging task, where it is crucial that self-localization be enforced precisely, notwithstanding the changing conditions of illumination, objects being shifted around and/or people affecting the appearance of the scene. In this scenario online learning seems the main way out, thanks to the possibility of adapting to changes in a smart and flexible way. Nevertheless, standard machine learning approaches usually suffer when confronted with massive amounts of data and when asked to work online. Online learning requires a high training and testing speed, all the more in place recognition, where a continuous flow of data comes from one or more cameras. In this paper we follow the Support Vector Machines-based approach of Pronobis et al. [26], proposing an improvement that we call Online Independent Support Vector Machines. This technique exploits linear independence in the image feature space to incrementally keep the size of the learning machine remarkably small while retaining the accuracy of a standard machine. Since the training and testing time crucially depend on the size of the machine, this solves the above stated problems. Our experimental results prove the effectiveness of the approach.
AB - In the framework of indoor mobile robotics, place recognition is a challenging task, where it is crucial that self-localization be enforced precisely, notwithstanding the changing conditions of illumination, objects being shifted around and/or people affecting the appearance of the scene. In this scenario online learning seems the main way out, thanks to the possibility of adapting to changes in a smart and flexible way. Nevertheless, standard machine learning approaches usually suffer when confronted with massive amounts of data and when asked to work online. Online learning requires a high training and testing speed, all the more in place recognition, where a continuous flow of data comes from one or more cameras. In this paper we follow the Support Vector Machines-based approach of Pronobis et al. [26], proposing an improvement that we call Online Independent Support Vector Machines. This technique exploits linear independence in the image feature space to incrementally keep the size of the learning machine remarkably small while retaining the accuracy of a standard machine. Since the training and testing time crucially depend on the size of the machine, this solves the above stated problems. Our experimental results prove the effectiveness of the approach.
UR - http://www.bmva.org/bmvc/2007/papers/paper-80.html
UR - http://www.scopus.com/inward/record.url?scp=84898463278&partnerID=8YFLogxK
U2 - 10.5244/C.21.111
DO - 10.5244/C.21.111
M3 - Conference contribution
BT - BMVC 2007 - Proceedings of the British Machine Vision Conference 2007
PB - British Machine Vision Association, BMVA
ER -