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MIntNet: Rapid Motion Intention Forecasting of Coupled Human-Robot Systems with Simulation-To-Real Autoregressive Neural Networks

John Atkins, Hyunglae Lee

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Abstract

This letter describes the use of a simulation-to-real training pipeline using autoregressive neural networks (MIntNet) for coupled-human robot motion intention prediction. Using only general prior knowledge about the interaction task, a large sim- ulation dataset was generated and used to train a multi-output variation of the classic autoregressive model. The network used an encoding-decoding method to construct condensed representations of the coupled system kinematics over a sequence of time windows and generated their condensed latent representations to predict multiple sequences of the future system states. This method was then tested on 10 real human subjects’ data for the interaction task and the simulation-to-real generalization performance was evalu- ated for the proposed network along with alternative implementa- tions of standard multilayered perceptron, convolutional, and long- short term memory based networks. Results show the proposed network has better generalization performance compared to the alternatives, capable of closely predicting positions during fast mo- tionalongnon-constantcurvatures subjecttolow-frequencydistur- bances.TheMIntNetwasabletoaccuratelypredictfuturepositions in a 200 ms window with errors of 3.1 ± 4.8 mm averaged over the prediction window with inference times of 0.26 ± 0.44 ms. Perfor- mance was higher for short range predictions with errors over the time window growing as 2.3 ± 3.4 mm at 50 ms, 2.4 ± 4.4 mm at 100 ms, and 5.5 ± 6.7 mm at 200 ms. Together these properties allow for agile predictions of motion intention that can be used to inform assistive control policies for enhanced collaborative control of coupled human-robot systems.

Index terms

Human-Centered Robotics Physical Human-Robot Interaction