Abstract

In this work, we consider the problem of sensing environmental influence on the recognition of human intention in human robot interaction (HRI). We propose a novel framework to analyze the mechanism and the characteristics of the environment in all aspects of HRI. A sensor-based deep learning method is proposed to model the conditional probability of interaction between humans and robots in different environments. Having collected RGB-D videos with 3D human skeletons and environmental features by a Kinect azure RGBD sensor, people’s intentions to interact with a robot is inferred by a discriminant sensor network, trained jointly with a LSTM and a MLP. We collect a HRI dataset with various possible environments to train models and then conduct experiments of predicting the intention of participants. Our method outperforms the traditional environment-free approach in training results (98.8% and 77.0% in testing accuracy). Experimental validations of real-time human prediction also prove the higher speed and precision of our method compared with the baseline.

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