LiPo-LCD: Combining Lines and Points for Appearance-based Loop Closure
Detection
- URL: http://arxiv.org/abs/2009.09897v1
- Date: Thu, 3 Sep 2020 10:43:16 GMT
- Title: LiPo-LCD: Combining Lines and Points for Appearance-based Loop Closure
Detection
- Authors: Joan P. Company-Corcoles, Emilio Garcia-Fidalgo, Alberto Ortiz
- Abstract summary: LiPo-LCD is a novel appearance-based loop closure detection method.
It retrieves previously seen images using a late fusion strategy.
A simple but effective mechanism, based on the concept of island, groups similar images close in time to reduce the image candidate search effort.
- Score: 1.6758573326215689
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Visual SLAM approaches typically depend on loop closure detection to correct
the inconsistencies that may arise during the map and camera trajectory
calculations, typically making use of point features for detecting and closing
the existing loops. In low-textured scenarios, however, it is difficult to find
enough point features and, hence, the performance of these solutions drops
drastically. An alternative for human-made scenarios, due to their structural
regularity, is the use of geometrical cues such as straight segments,
frequently present within these environments. Under this context, in this paper
we introduce LiPo-LCD, a novel appearance-based loop closure detection method
that integrates lines and points. Adopting the idea of incremental
Bag-of-Binary-Words schemes, we build separate BoW models for each feature, and
use them to retrieve previously seen images using a late fusion strategy.
Additionally, a simple but effective mechanism, based on the concept of island,
groups similar images close in time to reduce the image candidate search
effort. A final step validates geometrically the loop candidates by
incorporating the detected lines by means of a process comprising a line
feature matching stage, followed by a robust spatial verification stage, now
combining both lines and points. As it is reported in the paper, LiPo-LCD
compares well with several state-of-the-art solutions for a number of datasets
involving different environmental conditions.
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