Abstract: Collaborative perception among multiple connected and autonomous vehicles (CAVs) can greatly enhance perceptive capabilities by allowing vehicles to exchange supplementary information. Despite significant advances, many design challenges still remain due to channel variations and data heterogeneity among collaborative vehicles. To address these issues, we propose ACC-DA, a channel-aware collaborative perception framework to dynamically adjust the communication graph to minimize the average transmission delay while mitigating the impacts caused by data heterogeneity. More specifically, we first construct the communication graph to minimize the transmission delay according to different channel information state. We then propose an adaptive data reconstruction mechanism to dynamically adjust the rate-distortion trade-off to enhance perception efficiency while reducing the temporal redundancy during data transmissions. Finally, we conceive a domain alignment scheme to align the data distribution from different vehicles to mitigate the domain gap between different vehicles and improve the performance of the target task. Comprehensive experiments demonstrate the effectiveness of our method in comparison to the existing state-of-the-art works.
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