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Humanoid environmental perception with Gaussian process regression

机译:人形环境感知与高斯过程回归

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摘要

Nowadays, humanoids are increasingly expected acting in the real world to complete some high-level tasks humanly and intelligently. However, this is a hard issue due to that the real world is always extremely complicated and full of miscellaneous variations. As a consequence, for a real-world-acting robot, precisely perceiving the environmental changes might be an essential premise. Unlike human being, humanoid robot usually turns out to be with much less sensors to get enough information from the real world, which further leads the environmental perception problem to be more challenging. Although it can be tackled by establishing direct sensory mappings or adopting probabilistic filtering methods, the nonlinearity and uncertainty caused by both the complexity of the environment and the high degree of freedom of the robots will result in tough modeling difficulties. In our study, with the Gaussian process regression framework, an alternative learning approach to address such a modeling problem is proposed and discussed. Meanwhile, to debase the influence derived from limited sensors, the idea of fusing multiple sensory information is also involved. To evaluate the effectiveness, with two representative environment changing tasks, that is, suffering unknown external pushing and suddenly encountering sloped terrains, the proposed approach is applied to a humanoid, which is only equipped with a three-axis gyroscope and a three-axis accelerometer. Experimental results reveal that the proposed Gaussian process regression-based approach is effective in coping with the nonlinearity and uncertainty of the humanoid environmental perception problem. Further, a humanoid balancing controller is developed, which takes the output of the Gaussian process regression-based environmental perception as the seed to activate the corresponding balancing strategy. Both simulated and hardware experiments consistently show that our approach is valuable and leads to a good base for achieving a successful balancing controller for humanoid.
机译:如今,人形的人越来越多地在现实世界中表现出人,以完成人类和智能的一些高级任务。然而,这是一个艰难的问题,因为现实世界总是非常复杂并且充满了杂种的变化。因此,对于真实世界代理机器人来说,精确地察觉环境变化可能是一个必不可少的前提。与人类不同,人形机器人通常会有更少的传感器,以获得来自现实世界的足够信息,这进一步引领了环境感知问题更具挑战性。虽然可以通过建立直接感官映射或采用概率过滤方法来解决,但由于环境的复杂性和机器人的高度自由引起的非线性和不确定性将导致困难的模型困难。在我们的研究中,通过高斯过程回归框架,提出并讨论了解决这种建模问题的替代学习方法。同时,为了贬序从有限的传感器衍生的影响,也涉及融合多个感官信息的想法。为了评估有效性,有两个代表性的环境改变任务,即遭受未知的外部推动和突然遇到倾斜的地形,所提出的方法适用于人形,只能配备三轴陀螺仪和三轴加速度计。实验结果表明,拟议的高斯过程回归的方法是应对人形环境感知问题的非线性和不确定性的有效性。此外,开发了人形平衡控制器,其采用基于高斯进程回归的环境感知的输出作为激活相应的平衡策略。两种模拟和硬件实验都始终如一地表明,我们的方法是有价值的,并导致实现人形成功平衡控制器的良好基础。

著录项

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  • 作者单位

    Peking Univ Sch Elect Engn &

    Comp Sci Dept Machine Intelligence Key Lab Machine Percept Minist Educ Speech &

    Hear Beijing 100871 Peoples R China;

    Peking Univ Sch Elect Engn &

    Comp Sci Dept Machine Intelligence Key Lab Machine Percept Minist Educ Speech &

    Hear Beijing 100871 Peoples R China;

    Peking Univ Sch Elect Engn &

    Comp Sci Dept Machine Intelligence Key Lab Machine Percept Minist Educ Speech &

    Hear Beijing 100871 Peoples R China;

    Peking Univ Sch Elect Engn &

    Comp Sci Dept Machine Intelligence Key Lab Machine Percept Minist Educ Speech &

    Hear Beijing 100871 Peoples R China;

    Peking Univ Sch Elect Engn &

    Comp Sci Dept Machine Intelligence Key Lab Machine Percept Minist Educ Speech &

    Hear Beijing 100871 Peoples R China;

    Peking Univ Sch Elect Engn &

    Comp Sci Dept Machine Intelligence Key Lab Machine Percept Minist Educ Speech &

    Hear Beijing 100871 Peoples R China;

    Peking Univ Sch Elect Engn &

    Comp Sci Dept Machine Intelligence Key Lab Machine Percept Minist Educ Speech &

    Hear Beijing 100871 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机器人技术 ;
  • 关键词

    Environmental perception; intelligent behavior; humanoid robots; Gaussian process regression;

    机译:环境感知;智能行为;人形机器人;高斯过程回归;

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