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📄 Abstract
Abstract: Collaborative perception improves task performance by expanding the
perception range through information sharing among agents. . Immutable
heterogeneity poses a significant challenge in collaborative perception, as
participating agents may employ different and fixed perception models. This
leads to domain gaps in the intermediate features shared among agents,
consequently degrading collaborative performance. Aligning the features of all
agents to a common representation can eliminate domain gaps with low training
cost. However, in existing methods, the common representation is designated as
the representation of a specific agent, making it difficult for agents with
significant domain discrepancies from this specific agent to achieve proper
alignment. This paper proposes NegoCollab, a heterogeneous collaboration method
based on the negotiated common representation. It introduces a negotiator
during training to derive the common representation from the local
representations of each modality's agent, effectively reducing the inherent
domain gap with the various local representations. In NegoCollab, the mutual
transformation of features between the local representation space and the
common representation space is achieved by a pair of sender and receiver. To
better align local representations to the common representation containing
multimodal information, we introduce structural alignment loss and pragmatic
alignment loss in addition to the distribution alignment loss to supervise the
training. This enables the knowledge in the common representation to be fully
distilled into the sender.
Authors (9)
Congzhang Shao
Quan Yuan
Guiyang Luo
Yue Hu
Danni Wang
Yilin Liu
+3 more
Submitted
October 31, 2025
Key Contributions
NegoCollab proposes a novel approach for heterogeneous collaborative perception by introducing a negotiated common representation. This method addresses the challenge of domain gaps between fixed perception models of different agents, allowing for effective feature alignment without requiring a specific agent's representation to be dominant, thus reducing training costs.
Business Value
Enables more robust and efficient collaboration between diverse sensing systems, crucial for applications like autonomous vehicle platooning and coordinated robotic operations.