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OverlapNet: Loop Closing for LiDAR-based SLAM

About

Simultaneous localization and mapping (SLAM) is a fundamental capability required by most autonomous systems. In this paper, we address the problem of loop closing for SLAM based on 3D laser scans recorded by autonomous cars. Our approach utilizes a deep neural network exploiting different cues generated from LiDAR data for finding loop closures. It estimates an image overlap generalized to range images and provides a relative yaw angle estimate between pairs of scans. Based on such predictions, we tackle loop closure detection and integrate our approach into an existing SLAM system to improve its mapping results. We evaluate our approach on sequences of the KITTI odometry benchmark and the Ford campus dataset. We show that our method can effectively detect loop closures surpassing the detection performance of state-of-the-art methods. To highlight the generalization capabilities of our approach, we evaluate our model on the Ford campus dataset while using only KITTI for training. The experiments show that the learned representation is able to provide reliable loop closure candidates, also in unseen environments.

Xieyuanli Chen, Thomas L\"abe, Andres Milioto, Timo R\"ohling, Olga Vysotska, Alexandre Haag, Jens Behley, Cyrill Stachniss• 2021

Related benchmarks

TaskDatasetResultRank
Place RecognitionKITTI Sequence 00
F1 max86.9
9
Place RecognitionKITTI Sequence 02
F1 Max82.7
9
Place RecognitionKITTI Sequence 05
F1 Max92.4
9
Place RecognitionKITTI Mean across sequences 00-08
F1 Max0.79
9
Place RecognitionKITTI Sequence 06
F1 max93
9
Place RecognitionKITTI Sequence 07
F1 max0.818
9
Place RecognitionKITTI Sequence 08
F1 Score37.4
9
Yaw EstimationKITTI (sequences 00, 02, 05, 06, 07, 08)
Yaw Error (Seq 00)2.595
4
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