Collaborative State Fusion in Partially Known Multi-agent Environments
Abstract
In this paper, we study the collaborative state fusion problem in a multi-agent environment, where mobile agents collaborate to track movable targets. Due to the limited sensing range and potential errors of on-board sensors, it is necessary to aggregate individual observations to provide target state fusion for better target state estimation. Existing schemes do not perform well due to (1) impractical assumption of the fully known prior target state-space model and (2) observation outliers from individual sensors. To address the issues, we propose a two-stage collaborative fusion framework, namely Learnable Weighted Robust Fusion (LoF). LoF combines a local state estimator (e.g., Kalman Filter) with a learnable weight generator to address the mismatch between the prior state-space model and underlying patterns of moving targets. Moreover, given observation outliers, we develop a time-series soft medoid(TSM) scheme to perform robust fusion. We evaluate LoF in a collaborative detection simulation environment with promising results. In an example setting with 4 agents and 2 targets, LoF leads to a 9.1\% higher fusion gain compared to the state-of-the-art.
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