论文标题
气动软机器人3D变形的感测和重建
Sensing and Reconstruction of 3D Deformation on Pneumatic Soft Robots
论文作者
论文摘要
对于软机器人来说,实时本体感受是一个具有挑战性的问题,该机器人在身体变形中几乎具有无限的自由度。当使用多个致动器时,它会变得更加困难,因为彼此之间的相互作用引起的致动器也可能发生变形。为了解决此问题,我们在本文中提出了一种方法,以通过首先在气动执行器的腔室内整合多个低成本传感器,然后使用机器学习将捕获的信号转换为软机器人的形状参数,从而在气动软机器人上感知和重建3D变形。使用外运动捕获系统来生成用于培训和测试的数据集。借助良好形状的参数化,可以从从多个传感器获得的信号中准确地重建软机器人的3D形状。我们证明了这种方法对两种软机器人设计的有效性 - 机器人关节和可变形的膜。在将这些软机器人变形为紧凑的形状参数之后,我们可以有效地训练神经网络以从传感器信号中重建3D变形。传感和形状预测管道可以在消费级设备上实时运行50Hz。
Real-time proprioception is a challenging problem for soft robots, which have almost infinite degrees-of-freedom in body deformation. When multiple actuators are used, it becomes more difficult as deformation can also occur on actuators caused by interaction between each other. To tackle this problem, we present a method in this paper to sense and reconstruct 3D deformation on pneumatic soft robots by first integrating multiple low-cost sensors inside the chambers of pneumatic actuators and then using machine learning to convert the captured signals into shape parameters of soft robots. An exterior motion capture system is employed to generate the datasets for both training and testing. With the help of good shape parameterization, the 3D shape of a soft robot can be accurately reconstructed from signals obtained from multiple sensors. We demonstrate the effectiveness of this approach on two designs of soft robots -- a robotic joint and a deformable membrane. After parameterizing the deformation of these soft robots into compact shape parameters, we can effectively train the neural networks to reconstruct the 3D deformation from the sensor signals. The sensing and shape prediction pipeline can run at 50Hz in real-time on a consumer-level device.