The knowledge obtained by participating in the
competition mostly depended on not our map merge
technique but vSLAM techniques and their con-
straints. Therefore, it is necessary to improve the
method of vSLAM itself in future research.
7 CONCLUSION
We proposed a method for generating a consistent
global map from an intermittently created map. As
explained in the Section5, it was shown that indepen-
dent individual maps can be merged by our method,
and position estimation is possible by relocalization
to the merged maps. On the other hand, participation
in IPIN has made us aware of challenges in applying
to realistic problems. This issue is independent of the
map merge method, and is a common problem that
vSLAM has. Therefore, future studies should focus
on the vSLAM method itself.
ACKNOWLEDGEMENTS
A part of this work was supported by JSPS KAK-
ENHI, Grant Number JP18H04125.
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Generating a Consistent Global Map under Intermittent Mapping Conditions for Large-scale Vision-based Navigation
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