ROHCMay 28, 2019

Fast human motion prediction for human-robot collaboration with wearable interfaces

arXiv:1905.11734v120 citations
Originality Incremental advance
AI Analysis

This addresses safety and efficiency in industrial human-robot collaboration, though it is incremental as it builds on existing prediction methods with new interface components.

The paper tackles the problem of predicting human motion for human-robot collaboration by using physical and physiological signals, achieving a real-time classification accuracy of 94.3% ± 2.9% after 160.0 msec ± 80.0 msec from movement onset.

In this paper, we aim at improving human motion prediction during human-robot collaboration in industrial facilities by exploiting contributions from both physical and physiological signals. Improved human-machine collaboration could prove useful in several areas, while it is crucial for interacting robots to understand human movement as soon as possible to avoid accidents and injuries. In this perspective, we propose a novel human-robot interface capable to anticipate the user intention while performing reaching movements on a working bench in order to plan the action of a collaborative robot. The proposed interface can find many applications in the Industry 4.0 framework, where autonomous and collaborative robots will be an essential part of innovative facilities. A motion intention prediction and a motion direction prediction levels have been developed to improve detection speed and accuracy. A Gaussian Mixture Model (GMM) has been trained with IMU and EMG data following an evidence accumulation approach to predict reaching direction. Novel dynamic stopping criteria have been proposed to flexibly adjust the trade-off between early anticipation and accuracy according to the application. The output of the two predictors has been used as external inputs to a Finite State Machine (FSM) to control the behaviour of a physical robot according to user's action or inaction. Results show that our system outperforms previous methods, achieving a real-time classification accuracy of $94.3\pm2.9\%$ after $160.0msec\pm80.0msec$ from movement onset.

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