Place recognition with ConvNet landmarks: Viewpoint-robust, condition-robust, training-free


Autoria(s): Sunderhauf, Niko; Shirazi, Sareh; Jacobson, Adam; Dayoub, Feras; Pepperell, Edward; Upcroft, Ben; Milford, Michael
Data(s)

01/07/2015

Resumo

Place recognition has long been an incompletely solved problem in that all approaches involve significant compromises. Current methods address many but never all of the critical challenges of place recognition – viewpoint-invariance, condition-invariance and minimizing training requirements. Here we present an approach that adapts state-of-the-art object proposal techniques to identify potential landmarks within an image for place recognition. We use the astonishing power of convolutional neural network features to identify matching landmark proposals between images to perform place recognition over extreme appearance and viewpoint variations. Our system does not require any form of training, all components are generic enough to be used off-the-shelf. We present a range of challenging experiments in varied viewpoint and environmental conditions. We demonstrate superior performance to current state-of-the- art techniques. Furthermore, by building on existing and widely used recognition frameworks, this approach provides a highly compatible place recognition system with the potential for easy integration of other techniques such as object detection and semantic scene interpretation.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/84931/

Relação

http://eprints.qut.edu.au/84931/1/rss15_placeRec.pdf

http://www.roboticsproceedings.org

Sunderhauf, Niko, Shirazi, Sareh, Jacobson, Adam, Dayoub, Feras, Pepperell, Edward, Upcroft, Ben, & Milford, Michael (2015) Place recognition with ConvNet landmarks: Viewpoint-robust, condition-robust, training-free. In Proceedings of Robotics: Science and Systems XII, Auditorium Antonianum, Rome.

http://purl.org/au-research/grants/ARC/CE140100016

Direitos

Copyright 2015 [please consult the author]

Fonte

ARC Centre of Excellence for Robotic Vision; School of Electrical Engineering & Computer Science; Science & Engineering Faculty

Palavras-Chave #080101 Adaptive Agents and Intelligent Robotics #090602 Control Systems Robotics and Automation #robotics #place recognition #convolutional networks
Tipo

Conference Paper