CVMar 2

CoopDiff: A Diffusion-Guided Approach for Cooperation under Corruptions

arXiv:2603.01688v12 citationsh-index: 4
Originality Incremental advance
AI Analysis

This addresses robustness issues in cooperative perception for autonomous systems, though it is incremental as it builds on existing diffusion and fusion techniques.

The paper tackles the problem of cooperative perception robustness under diverse corruptions by introducing CoopDiff, a diffusion-based framework that uses a teacher-student paradigm with denoising, achieving consistent performance gains over prior methods on constructed benchmarks with six corruption types.

Cooperative perception lets agents share information to expand coverage and improve scene understanding. However, in real-world scenarios, diverse and unpredictable corruptions undermine its robustness and generalization. To address these challenges, we introduce CoopDiff, a diffusion-based cooperative perception framework that mitigates corruptions via a denoising mechanism. CoopDiff adopts a teacher-student paradigm: the Quality-Aware Teacher performs voxel-level early fusion with Quality of Interest weighting and semantic guidance, then produces clean supervision features via a diffusion denoiser. The Dual-Branch Diffusion Student first separates ego and cooperative streams in encoding to reconstruct the teacher's clean targets. And then, an Ego-Guided Cross-Attention mechanism facilitates balanced decoding under degradation by adaptively integrating ego and cooperative features. We evaluate CoopDiff on two constructed multi-degradation benchmarks, OPV2Vn and DAIR-V2Xn, each incorporating six corruption types, including environmental and sensor-level distortions. Benefiting from the inherent denoising properties of diffusion, CoopDiff consistently outperforms prior methods across all degradation types and lowers the relative corruption error. Furthermore, it offers a tunable balance between precision and inference efficiency.

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