Interpretable Goal Recognition for Path Planning with ART Networks

2021 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN)(2021)

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摘要
Goal recognition for path planning is an important task of intention identification and situation awareness, requiring an observer to predict the goal of an evader given observations of its movements. While existing models based on planning or Markov Decision Process (MDP) show superior performance over traditional library based methods, they require much effort in model design and can hardly provide legible decision rules for their users. To make the system more user-friendly while preserving accuracy of goal inference, this paper proposes a novel self-organizing neural network based inference model, which learns compact rule sets through generalizing the streaming observations of an evader. More critically, the system manifests a high level of interpretability with the linguistic if-then rule base, making it easily comprehensible for human decision makers. We conducted extensive experiments on a large-scale real-world road network. Results show that the proposed model produces accuracy comparable to those of two state-of-the-art methods while uniquely providing legible inference rules and strong robustness against multiple goals with missing data.
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关键词
interpretable goal recognition,path planning,ART networks,intention identification,situation awareness,observer,evader given observations,Markov Decision Process,traditional library based methods,model design,legible decision rules,system more user-friendly,goal inference,neural network,compact rule sets,streaming observations,system manifests,rule base,human decision makers,real-world road network,legible inference rules,multiple goals
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