Abstract

The performance of humanoid robots is improving, owing in part to their participation in robot games such as the DARPA Robotics Challenge. Along with the 2018 Winter Olympics in Pyeongchang, a Skiing Robot Competition was held in which humanoid robots participated autonomously in a giant slalom alpine skiing competition. The robots were required to transit through many red or blue gates on the ski slope to reach the finish line. The course was relatively short at 100 m long and had an intermediate-level rating. A 1.23 m tall humanoid ski robot, ‘DIANA’, was developed for this skiing competition. As a humanoid robot that mimics humans, the goal was to descend the slope as fast as possible, so the robot was developed to perform a carved turn motion. The carved turn was difficult to balance compared to other turn methods. Therefore, ZMP control, which could secure the posture stability of the biped robot, was applied. Since skiing takes place outdoors, it was necessary to ensure recognition of the flags in various weather conditions. This was ensured using deep learning-based vision recognition. Thus, the performance of the humanoid robot DIANA was established using the carved turn in an experiment on an actual ski slope. The ultimate vision for humanoid robots is for them to naturally blend into human society and provide necessary services to people. Previously, there was no way for a full-sized humanoid robot to move on a snowy mountain. In this study, a humanoid robot that transcends this limitation was realized.

Highlights

  • For robots to be useful in society, they must be able to perform all the activities that humans can perform [1]

  • The usefulness of humanoid robots will increase only when their ability to mimic human behavior under harsh environmental conditions is established via rigorous experimentation

  • We present the research process and results for a humanoid robot with a height of 1.23 m as it participated in a human giant slalom match on an actual slope

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Summary

Introduction

For robots to be useful in society, they must be able to perform all the activities that humans can perform [1]. Research on special types of robots that can perform tasks on behalf of human counterparts in various environments and circumstances, such as exploration [3,4], crop collecting [5,6], and disasters [7,8,9], is being actively conducted These special types of robots have limited universal applicability because of their specialized form. In this study, we developed the world’s first full-sized humanoid skiing robot with a height of 1.23 m It can recognize installed flags in an actual outdoor slope using deep learning and turn through the gates with a carved turn using the ZMP method generally used in bipedal robots. The computer used for machine learning to create a learning model was equipped with three NVIDIA Titan xp, CUDA 9.2.148, CUDNN 7.2, TensorRT 4.0.1, and NVIDIA driver 396.37 on Ubuntu 16.04 OS

Color-Based Recognition
Deep Learning Gate Detection
Carved Turn
Dynamics of a Carved Turn
Controls for Skiing
Simulation Result
Field Test
Test Result
Conclusions
Full Text
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