Human-Aided Online Terrain Classification for Bipedal Robots Using Augmented Reality

Zahraa Awad, Celine Chibani, Noel Maalouf, Imad H. Elhajjl
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Abstract

This paper presents an online training system, enhanced with augmented reality, for improving real-time terrain classification by humanoid robots. The real-time terrain type prediction model relies on data acquired from four different sensors (force, position, current, and inertial) of the NAO humanoid robot. We compare the performance of Stochastic Gradient Descent, Passive Aggressive classifier, and Support Vector Machine in predicting the terrain type being traversed. Then, the models are trained online by manually inputting the correct terrain type being traversed to improve the accuracy of the predictions over time. An Augmented Reality (AR) user interface is designed to display the robot diagnostics and terrain type being predicted and obtain the user feedback to correct the terrain type when needed. This allows the user to improve the classification results and enhance the data collection process in the easiest way possible. The experimental results show that the Passive Aggressive classifier is the most successful among the three online classifiers with an accuracy of 81.4%.
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基于增强现实的双足机器人人工辅助在线地形分类
本文提出了一种基于增强现实技术的人形机器人实时地形分类在线训练系统。实时地形类型预测模型依赖于从NAO人形机器人的四个不同传感器(力、位置、电流和惯性)获取的数据。我们比较了随机梯度下降、被动攻击分类器和支持向量机在预测被穿越的地形类型方面的性能。然后,通过手动输入所穿越的正确地形类型来在线训练模型,以提高预测的准确性。增强现实(AR)用户界面用于显示机器人诊断和预测的地形类型,并在需要时获得用户反馈以纠正地形类型。这允许用户以最简单的方式改进分类结果并增强数据收集过程。实验结果表明,被动攻击分类器是三种在线分类器中最成功的分类器,准确率为81.4%。
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