Feb. 8, 2024, 5:42 a.m. | Jinlong Li Baolu Li Xinyu Liu Runsheng Xu Jiaqi Ma Hongkai Yu

cs.LG updates on arXiv.org arxiv.org

The diverse agents in multi-agent perception systems may be from different companies. Each company might use the identical classic neural network architecture based encoder for feature extraction. However, the data source to train the various agents is independent and private in each company, leading to the Distribution Gap of different private data for training distinct agents in multi-agent perception system. The data silos by the above Distribution Gap could result in a significant performance decline in multi-agent perception. In this …

agent agents architecture breaking companies cs.cv cs.lg data data silos distribution diverse domain encoder extraction feature feature extraction gap independent multi-agent network network architecture neural network perception systems train

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