Real-Time Workload Classification during Driving using HyperNetworks

2018 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2018)

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摘要
Classifying human cognitive states from behavioral and physiological signals is a challenging problem with important applications in robotics. The problem is challenging due to the data variability among individual users, and sensor artefacts. In this work, we propose an end-to-end framework for real-time cognitive workload classification with mixture Hyper Long Short Term Memory Networks, a novel variant of HyperNetworks. Evaluating the proposed approach on an eye-gaze pattern dataset collected from simulated driving scenarios of different cognitive demands, we show that the proposed framework outperforms previous baseline methods and achieves 83.9\% precision and 87.8\% recall during test. We also demonstrate the merit of our proposed architecture by showing improved performance over other LSTM-based methods.
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关键词
m-HyperLSTM,mixture hyper long short term memory networks,cognitive demands,data variability,robotics,physiological signals,behavioral signals,human cognitive states,eye-gaze pattern dataset,HyperNetworks,real-time cognitive workload classification,sensor artefacts
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