Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/138400
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Type: Conference paper
Title: OpenSeqSLAM2.0: An Open Source Toolbox for Visual Place Recognition under Changing Conditions
Author: Talbot, B.
Garg, S.
Milford, M.
Citation: Proceedings of the ... IEEE/RSJ International Conference on Intelligent Robots and Systems. IEEE/RSJ International Conference on Intelligent Robots and Systems, 2019 / Maciejewski, A.A., Okamura, A., Bicchi, A., Stachniss, C., Song, D.Z., Lee, D.H., Chaumette, F., Ding, H., Li, J.S., Wen, J., Roberts, J., Masamune, K., Chong, N.Y., Amato, N., Tsagwarakis, N., Rocco, P., Asfour, T., Chung, W.K., Yasuyoshi, Y., Sun, Y., Maciekeski, T., Althoefer, K., AndradeCetto, J., Chung, W.K., Demircan, E., Dias, J., Fraisse, P., Gross, R., Harada, H., Hasegawa, Y., Hayashibe, M., Kiguchi, K., Kim, K., Kroeger, T., Li, Y., Ma, S., Mochiyama, H., Monje, C.A., Rekleitis, I., Roberts, R., Stulp, F., Tsai, C.H.D., Zollo, L. (ed./s), pp.7758-7765
Publisher: IEEE
Publisher Place: New York City, NY, USA
Issue Date: 2019
Series/Report no.: IEEE International Conference on Intelligent Robots and Systems
ISBN: 9781538680940
ISSN: 2153-0858
2153-0866
Conference Name: IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) (1 Oct 2018 - 5 Oct 2018 : Madrid, Spain)
Editor: Maciejewski, A.A.
Okamura, A.
Bicchi, A.
Stachniss, C.
Song, D.Z.
Lee, D.H.
Chaumette, F.
Ding, H.
Li, J.S.
Wen, J.
Roberts, J.
Masamune, K.
Chong, N.Y.
Amato, N.
Tsagwarakis, N.
Rocco, P.
Asfour, T.
Chung, W.K.
Yasuyoshi, Y.
Sun, Y.
Maciekeski, T.
Althoefer, K.
AndradeCetto, J.
Chung, W.K.
Demircan, E.
Dias, J.
Fraisse, P.
Gross, R.
Harada, H.
Hasegawa, Y.
Hayashibe, M.
Kiguchi, K.
Kim, K.
Kroeger, T.
Li, Y.
Ma, S.
Mochiyama, H.
Monje, C.A.
Rekleitis, I.
Roberts, R.
Stulp, F.
Tsai, C.H.D.
Zollo, L.
Statement of
Responsibility: 
Ben Talbot, Sourav Garg, and Michael Milford
Abstract: Visually recognising a traversed route — regardless of whether seen during the day or night, in clear or inclement conditions, or in summer or winter — is an important capability for navigating robots. Since SeqSLAM was introduced in 2012, a large body of work has followed exploring how robotic systems can use the algorithm to meet the challenges posed by navigation in changing environmental conditions. The following paper describes OpenSeqSLAM2.0, a fully open-source toolbox for visual place recognition under changing conditions. Beyond the benefits of open access to the source code, OpenSeqSLAM2.0 provides a number of tools to facilitate exploration of the visual place recognition problem and interactive parameter tuning. Using the new open source platform, it is shown for the first time how comprehensive parameter characterisations provide new insights into many of the system components previously presented in ad hoc ways and provide users with a guide to what system component options should be used under what circumstances and why.
Rights: ©2018 IEEE
DOI: 10.1109/IROS.2018.8593761
Grant ID: http://purl.org/au-research/grants/arc/FT140101229
Published version: https://ieeexplore.ieee.org/xpl/conhome/8574473/proceeding
Appears in Collections:Australian Institute for Machine Learning publications

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