Decision-Level Fusion of YOLOv8 and PointPillars: Initial Findings

Authors

Ivan Vrsalović
University of Rijeka, Faculty of Informatics and Digital Technologies , University of Rijeka, Faculty of Engineering
https://orcid.org/0009-0005-6854-6127
Kristijan Lenac
University of Rijeka, Faculty of Engineering
https://orcid.org/0000-0003-0201-4177

Synopsis

This paper presents a multi-modal perception system tailored for autonomous driving and safety monitoring in public parking environments, utilizing a dual-stage decision-level fusion of YOLOv8-seg and PointPillars. The architecture ensures precise occupancy monitoring and safety by integrating 2D instance segmentation with 3D LiDAR point clouds. A specialized decision fusion rngine features a distance-based matching phase and a rescue phase to maintain detections during sensor occlusions. By implementing a 2.5m Euclidean threshold and a high-confidence YOLO override mechanism, the system effectively compensates for LiDAR sparsity. Experimental results on the KITTI dataset demonstrate significant reliability gains, notably increasing the F1-score for pedestrians by 10.11% and cars by 6.99%. These findings prove that the synergy of visual masks and geometric data provides a robust solution for real-time monitoring of vehicles and vulnerable road users (pedestrians and cyclists) in automated parking environments.

Author Biographies

Ivan Vrsalović, University of Rijeka, Faculty of Informatics and Digital Technologies, University of Rijeka, Faculty of Engineering

Rijeka, Croatia. E-mail:  ivan.vrsalovic@uniri.hr

Kristijan Lenac, University of Rijeka, Faculty of Engineering

Rijeka, Croatia. E-mail: klenac@riteh.hr

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Published

March 6, 2026

Series

How to Cite

Vrsalović, I., & Lenac, K. (2026). Decision-Level Fusion of YOLOv8 and PointPillars: Initial Findings. In B. Potočnik (Ed.), & (Ed.), ROSUS 2026 - Računalniška obdelava slik in njena uporaba v Sloveniji 2026: Zbornik 20. strokovne konference (Vols. 20., pp. 71-82). University of Maribor Press. https://doi.org/10.18690/um.feri.4.2026.7