2023
DOI: 10.3390/s23249841
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A Deep Learning Approach for Biped Robot Locomotion Interface Using a Single Inertial Sensor

Tsige Tadesse Alemayoh,
Jae Hoon Lee,
Shingo Okamoto

Abstract: In this study, we introduce a novel framework that combines human motion parameterization from a single inertial sensor, motion synthesis from these parameters, and biped robot motion control using the synthesized motion. This framework applies advanced deep learning methods to data obtained from an IMU attached to a human subject’s pelvis. This minimalistic sensor setup simplifies the data collection process, overcoming price and complexity challenges related to multi-sensor systems. We employed a Bi-LSTM enc… Show more

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