Rózsa, Zoltán and Madaras, Ákos and Szirányi, Tamás (2025) Efficient Moving Object Segmentation in LiDAR Point Clouds Using Minimal Number of Sweeps. IEEE OPEN JOURNAL OF SIGNAL PROCESSING, 6. pp. 118-128. ISSN 2644-1322
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Abstract
LiDAR point clouds are a rich source of information for autonomous vehicles and ADAS systems. However, they can be challenging to segment for moving objects as - among other things - finding correspondences between sparse point clouds of consecutive frames is difficult. Traditional methods rely on a (global or local) map of the environment, which can be demanding to acquire and maintain in real-world conditions and the presence of the moving objects themselves. This paper proposes a novel approach using as minimal sweeps as possible to decrease the computational burden and achieve mapless moving object segmentation (MOS) in LiDAR point clouds. Our approach is based on a multimodal learning model with single-modal inference. The model is trained on a dataset of LiDAR point clouds and related camera images. The model learns to associate features from the two modalities, allowing it to predict dynamic objects even in the absence of a map and the camera modality. We propose semantic information usage for multi-frame instance segmentation in order to enhance performance measures. We evaluate our approach to the SemanticKITTI and Apollo real-world autonomous driving datasets. Our results show that our approach can achieve state-of-the-art performance on moving object segmentation and utilize only a few (even one) LiDAR frames. The implementation with examples and pre-trained networks is available: https://github.com/madak88/2DPASS-MOS © 2020 IEEE.
| Item Type: | Article |
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| Additional Information: | Machine Perception Research Laboratory, HUN-REN Institute for Computer Science and Control (HUN-REN SZTAKI), Budapest, H-1111, Hungary Budapest University of Technology and Economics, Department of Material Handling and Logistics Systems, Faculty of Transportation Engineering and Vehicle Engineering, Budapest, H-1111, Hungary Export Date: 04 July 2025; Cited By: 1; Correspondence Address: Z. Rozsa; Machine Perception Research Laboratory, HUN-REN Institute for Computer Science and Control (HUN-REN SZTAKI), Budapest, H-1111, Hungary; email: rozsa.zoltan@sztaki.hun-ren.hu |
| Uncontrolled Keywords: | LIDAR; image enhancement; Real-world; Inference engines; Moving objects; Knowledge transfer; Magnetic levitation vehicles; Autonomous Vehicles; Autonomous systems; POINT CLOUDS; autonomous driving; Semantic segmentation; Sources of informations; moving object segmentation; sparse point cloud; Point-clouds; |
| Subjects: | Q Science / természettudomány > QA Mathematics / matematika > QA75 Electronic computers. Computer science / számítástechnika, számítógéptudomány T Technology / alkalmazott, műszaki tudományok > T2 Technology (General) / műszaki tudományok általában |
| SWORD Depositor: | MTMT SWORD |
| Depositing User: | MTMT SWORD |
| Date Deposited: | 16 Sep 2025 13:35 |
| Last Modified: | 16 Sep 2025 13:35 |
| URI: | https://real.mtak.hu/id/eprint/224363 |
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