Black-Box vs. Gray-Box: A Case Study on Learning Table Tennis Ball Trajectory Prediction with Spin and Impacts

Jan Achterhold, Philip Tobuschat, Hao Ma, Dieter Buechler, Michael Muehlebach, Joerg Stueckler
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Abstract

In this paper, we present a method for table tennis ball trajectory filtering and prediction. Our gray-box approach builds on a physical model. At the same time, we use data to learn parameters of the dynamics model, of an extended Kalman filter, and of a neural model that infers the ball's initial condition. We demonstrate superior prediction performance of our approach over two black-box approaches, which are not supplied with physical prior knowledge. We demonstrate that initializing the spin from parameters of the ball launcher using a neural network drastically improves long-time prediction performance over estimating the spin purely from measured ball positions. An accurate prediction of the ball trajectory is crucial for successful returns. We therefore evaluate the return performance with a pneumatic artificial muscular robot and achieve a return rate of 29/30 (97.7%).
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黑盒与灰盒:基于旋转和冲击的乒乓球运动轨迹预测学习案例研究
本文提出了一种乒乓球运动轨迹滤波和预测方法。我们的灰盒方法建立在物理模型之上。同时,我们使用数据来学习动力学模型的参数,扩展卡尔曼滤波器的参数,以及推断球初始条件的神经模型的参数。我们证明了我们的方法优于两种不提供物理先验知识的黑盒方法的预测性能。我们证明,使用神经网络从球发射器的参数初始化自旋,比纯粹从测量的球位置估计自旋大大提高了长期预测性能。准确预测球的运动轨迹对成功回击至关重要。因此,我们使用气动人工肌肉机器人评估返回性能,并实现了29/30(97.7%)的返回率。
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