Force-Sensor-Based Walking-Environment Recognition of Biped Robots

H. Mattausch, A. Luo, S. Dutta, T. Maiti, M. Miura-Mattausch
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引用次数: 1

Abstract

Usability of biped robots in real applications depends on the robot capability of stable and robust walking with high efficiency. To cope with the various practical challenges, the robot must therefore be able to recognize its environment properties. We report a system for indoor-surface detection based on force sensors attached below the feet of the robot. To verify the recognition performance, indoor evaluation surfaces with 5 different properties are used. The capability of fast surface-property recognition is realized by processing the stream of force-sensor data according to the method of overlapping sliding windows, in order to generate 4 different features in a dynamic way. A k-nearest-neighbor (kNN) classifier with multiple classes is applied for real-time high- accuracy recognition of the surface-specific robot-walking characteristics. In particular, recognition performance can be increased by combining the studied features into a single feature descriptor, instead of using each feature separately. Achievability of an overall accuracy of 90.4% and an average precision of 91.49% is verified. Thus, a favorable trade-off between cost and performance is realized. The developed method is useful for optimized dynamic robot-body balancing and walking-speed adjustment, according to the recognized surface properties.
基于力传感器的双足机器人行走环境识别
双足机器人在实际应用中的可用性取决于机器人稳定、鲁棒、高效的行走能力。因此,为了应对各种实际挑战,机器人必须能够识别其环境属性。我们报告了一个基于附着在机器人脚下的力传感器的室内表面检测系统。为了验证识别性能,使用了具有5种不同属性的室内评估面。采用滑动窗口重叠的方法对力传感器数据流进行处理,动态生成4种不同的特征,实现了快速的表面特征识别能力。采用多类k-最近邻分类器对机器人行走特征进行实时高精度识别。特别是,通过将所研究的特征组合到单个特征描述符中,而不是单独使用每个特征,可以提高识别性能。验证了该方法的总体精度为90.4%,平均精度为91.49%。因此,在成本和性能之间实现了有利的权衡。该方法可根据识别出的表面特性,优化机器人动态体平衡和行走速度调整。
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