GT-Space: Enhancing Heterogeneous Collaborative Perception with Ground Truth Feature Space

Researchers have introduced GT-Space, a novel framework that enables autonomous vehicles with different sensor modalities to collaborate effectively through a shared feature space. This solution addresses data heterogeneity, significantly improving detection accuracy in intelligent transportation systems.
Computer Science > Machine Learning
Title:GT-Space: Enhancing Heterogeneous Collaborative Perception with Ground Truth Feature Space
View PDF HTML (experimental)Abstract:In autonomous driving, multi-agent collaborative perception enhances sensing capabilities by enabling agents to share perceptual data. A key challenge lies in handling {\em heterogeneous} features from agents equipped with different sensing modalities or model architectures, which complicates data fusion. Existing approaches often require retraining encoders or designing interpreter modules for pairwise feature alignment, but these solutions are not scalable in practice. To address this, we propose {\em GT-Space}, a flexible and scalable collaborative perception framework for heterogeneous agents. GT-Space constructs a common feature space from ground-truth labels, providing a unified reference for feature alignment. With this shared space, agents only need a single adapter module to project their features, eliminating the need for pairwise interactions with other agents. Furthermore, we design a fusion network trained with contrastive losses across diverse modality combinations. Extensive experiments on simulation datasets (OPV2V and V2XSet) and a real-world dataset (RCooper) demonstrate that GT-Space consistently outperforms baselines in detection accuracy while delivering robust performance. Our code will be released at this https URL.
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Source: arXiv cs.AI Recent










