Abstract

Sports robots have become a popular research topic in recent years. For table-tennis robots, ball tracking and trajectory prediction are the most important technologies. Several methods were developed in previous research efforts, and they can be divided into two categories: physical models and machine learning. The former use algorithms that consider gravity, air resistance, the Magnus effect, and elastic collision. However, estimating these external forces require high sampling frequencies that can only be achieved with high-efficiency imaging equipment. This study thus employed machine learning to learn the flight trajectories of ping-pong balls, which consist of two parabolic trajectories: one beginning at the serving point and ending at the landing point on the table, and the other beginning at the landing point and ending at the striking point of the robot. We established two artificial neural networks to learn these two trajectories. We conducted a simulation experiment using 200 real-world trajectories as training data. The mean errors of the proposed dual-network method and a single-network model were 39.6 mm and 42.9 mm, respectively. The results indicate that the prediction performance of the proposed dual-network method is better than that of the single-network approach. We also used the physical model to generate 330 trajectories for training and the simulation test results show that the trained model achieved a success rate of 97% out of 30 attempts, which was higher than the success rate of 70% obtained by the physical model. A physical experiment presented a mean error and standard deviation of 36.6 mm and 18.8 mm, respectively. The results also show that even without the time stamps, the proposed method maintains its prediction performance with the additional advantages of 15% fewer parameters in the overall network and 54% shorter training time.

Highlights

  • Recent years have seen the gradual maturing of sensory, machine vision, and control technology in smart robots

  • The results show that even without the time stamps, the proposed method maintains its prediction performance with the additional advantages of 15% fewer parameters in the overall network and 54% shorter training time

  • The success rate of 70% of the physical model was worse than 97% of the proposed dual-network method

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Summary

Introduction

Recent years have seen the gradual maturing of sensory, machine vision, and control technology in smart robots. Several domestic and foreign studies explored the applicability of robots to sports. Table-tennis robots use a wide range of technologies, including object recognition, object tracking, 3D reconstruction, object trajectory prediction, robot motion planning, and system integration. This as well as the fact that they are easy to showcase attracted the attention of many researchers. A ping-pong ball trajectory system combines vision, 3D space, and prediction algorithms, none of which are dispensable. The vision system must be able to detect and position the ball [1,2]. The data captured by cameras are two-dimensional (2D), so three-dimensional (3D) data cannot be derived by Sensors 2020, 20, 333; doi:10.3390/s20020333 www.mdpi.com/journal/sensors

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