Evaluation of Long-term LiDAR Place Recognition

2021 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS)(2021)

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摘要
We compare a state-of-the-art deep image retrieval and a deep place recognition method for place recognition using LiDAR data. Place recognition aims to detect previously visited locations and thus provides an important tool for navigation, mapping, and localisation. Experimental comparisons are conducted using challenging outdoor and indoor datasets, Oxford Radar RobotCar and COLD, in the "long-term" setting where the test conditions differ substantially from the training and gallery data. Based on our results the image retrieval methods using LiDAR depth images can achieve accurate localization (the single best match recall 80%) within 5.00 m in urban outdoors. In office indoors the comparable accuracy is 50 cm but is more sensitive to changes in the environment.
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关键词
long-term LiDAR place recognition,state-of-the-art deep image retrieval,deep place recognition method,LiDAR data,place recognition aims,visited locations,experimental comparisons,challenging outdoor datasets,indoor datasets,Oxford Radar RobotCar,gallery data,image retrieval methods,LiDAR depth images,size 5.0 m,size 50.0 cm
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