Home /Research /COMBINING LIDAR SLAM AND DEEP LEARNING-BASED PEOPLE DETECTION FOR AUTONOMOUS INDOOR MAPPING IN A CROWDED ENVIRONMENT
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COMBINING LIDAR SLAM AND DEEP LEARNING-BASED PEOPLE DETECTION FOR AUTONOMOUS INDOOR MAPPING IN A CROWDED ENVIRONMENT

Diego Tiozzo Fasiolo, Eleonora Maset, Lorenzo Scalera, Sadiq Olayiwola Macaulay, A. Gasparetto, Andrea Fusiello

Year
2022
Citations
9
Access
Open access

Abstract

Abstract. In this paper, we present a mapping system based on an autonomous mobile robot equipped with a LiDAR device and a camera, that can deal with the presence of people. Thanks to a deep learning approach, the position of humans is identified and a new surveying path is planned that brings the robot to scan occluded areas, so as to obtain a complete point cloud of the environment. Experimental results are performed with a wheeled mobile robot in different crowded scenarios, showing the applicability of the proposed approach to perform an autonomous survey avoiding occlusions and automatically removing from the map noisy and spurious objects caused by people presence.

Keywords

Artificial intelligenceComputer visionLidarComputer sciencePoint cloudSimultaneous localization and mappingMobile robotRobotDeep learningPosition (finance)

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