Abstract
Privacy concerns can potentially make camera-based object classification unsuitable for robot navigation. To address this problem, we propose a novel object classification system using only a 2D-LiDAR sensor on mobile robots. The proposed system enables semantic understanding of the environment by applying the YOLOv8n model to classify objects such as tables, chairs, cupboards, walls, and door frames using only data captured by a 2D-LiDAR sensor. The experimental results show that the resulting YOLOv8n model achieved an accuracy of 83.7% in real-time classification running on Raspberry Pi 5, despite having a lower accuracy when classifying door-frames and walls. This validates our proposed approach as a privacy-friendly alternative to camera-based methods and illustrates that it can run on small computers onboard mobile robots.
| Original language | English |
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| Pages | 246 |
| Number of pages | 260 |
| DOIs | |
| Publication status | Published - 1 Oct 2025 |
| Event | Optimization, Learning Algorithms and Applications 2025 - Sesti Levante, Italy Duration: 28 Apr 2025 → 30 Apr 2025 Conference number: 5 https://ol2a.ipb.pt/ |
Conference
| Conference | Optimization, Learning Algorithms and Applications 2025 |
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| Abbreviated title | OL2A 2025 |
| Country/Territory | Italy |
| City | Sesti Levante |
| Period | 28/04/25 → 30/04/25 |
| Internet address |
Keywords
- robotics
- yolo
- computer vision
- 2d-lidar
Research Focus Areas Hanze University of Applied Sciences * (mandatory by Hanze)
- No Hanze research focus area applicable
Research Focus Areas Research Centre or Centre of Expertise * (mandatory by Hanze)
- Artificial Intelligence
- Cyberfysical systems
Publinova themes
- Technology