WaveComm: Lightweight Communication for Collaborative Perception via Wavelet Feature Distillation
arXiv cs.CV / 3/17/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The article addresses scalability and real-time performance challenges in bandwidth-limited multi-agent sensing by proposing WaveComm.
- WaveComm uses Discrete Wavelet Transform to decompose feature maps and transmits only low-frequency components, with high-frequency details reconstructed at the receiver by a lightweight generator.
- A Multi-Scale Distillation (MSD) loss is employed to optimize reconstruction quality across pixel, structural, semantic, and distributional levels.
- Experimental results on OPV2V and DAIR-V2X show that WaveComm maintains state-of-the-art perception performance while reducing communication volume to approximately 86-87% of the original.
- Ablation studies validate the effectiveness of the key components and demonstrate competitive improvements in both communication efficiency and perception accuracy compared to existing approaches.
Related Articles
The Markup
Dev.to

OpenSeeker's open-source approach aims to break up the data monopoly for AI search agents
THE DECODER

How to Choose the Best AI Chat Models of 2026 for Your Business Needs
Dev.to

I built an AI that generates lesson plans in your exact teaching voice (open source)
Dev.to

How to Master AI Tools in 2026: A Comprehensive Guide
Dev.to