Litcius/Paper detail

CNN-Based Fault Detection of Scan Matching for Accurate SLAM in Dynamic Environments

Hyein Jeong, Heoncheol Lee

2023Sensors13 citationsDOIOpen Access PDF

Abstract

This paper proposes a method for CNN-based fault detection of the scan-matching algorithm for accurate SLAM in dynamic environments. When there are dynamic objects in an environment, the environment that is detected by a LiDAR sensor changes. Thus, the scan matching of laser scans is likely to fail. Therefore, a more robust scan-matching algorithm to overcome the faults of scan matching is needed for 2D SLAM. The proposed method first receives raw scan data in an unknown environment and executes ICP (Iterative Closest Points) scan matching of laser scans from a 2D LiDAR. Then, the matched scans are converted into images, which are fed into a CNN model for its training to detect the faults of scan matching. Finally, the trained model detects the faults when new scan data are provided. The training and evaluation are performed in various dynamic environments, taking real-world scenarios into account. Experimental results showed that the proposed method accurately detects the faults of scan matching in every experimental environment.

Topics & Concepts

Matching (statistics)Computer scienceArtificial intelligenceLidarComputer visionSimultaneous localization and mappingRangingBlossom algorithmPattern recognition (psychology)Remote sensingMathematicsGeologyRobotMobile robotTelecommunicationsStatisticsRobotics and Sensor-Based LocalizationAdvanced Neural Network ApplicationsAdvanced Optical Sensing Technologies