Class-Adaptive Cooperative Perception for Multi-Class LiDAR-based 3D Object Detection in V2X Systems
Blessing Agyei Kyem, Joshua Kofi Asamoah, Armstrong Aboah

TL;DR
This paper introduces a class-adaptive cooperative perception framework for multi-class 3D object detection using LiDAR in V2X systems, improving detection balance across diverse object categories.
Contribution
It proposes a novel architecture with class-specific fusion and adaptive feature extraction, addressing limitations of uniform fusion strategies in multi-class scenarios.
Findings
Consistent performance improvements over baselines.
Largest gains achieved on trucks and pedestrians.
Competitive results on cars.
Abstract
Cooperative perception allows connected vehicles and roadside infrastructure to share sensor observations, creating a fused scene representation beyond the capability of any single platform. However, most cooperative 3D object detectors use a uniform fusion strategy for all object classes, which limits their ability to handle the different geometric structures and point-sampling patterns of small and large objects. This problem is further reinforced by narrow evaluation protocols that often emphasize a single dominant class or only a few cooperation settings, leaving robust multi-class detection across diverse vehicle-to-everything interactions insufficiently explored. To address this gap, we propose a class-adaptive cooperative perception architecture for multi-class 3D object detection from LiDAR data. The model integrates four components: multi-scale window attention with learned…
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