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A learning framework towards real-time detection and localization of a ball for robotic table tennis system

机译:用于机器人乒乓球系统的球的实时检测和定位的学习框架

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As a real-time serving system interacting with a highly dynamic environment, robotic table tennis system has a high requirement against the accuracy and robustness of real-time detection and localization of a ping-pong ball. Relative to its size, the ball is a high speed flying-spinning object. The existing methods use general features such as color and shape to detect and localize the ball, which rigidly depends on the prior knowledge. Their performance is susceptible to the change of the environment, e.g., the light condition, the color of ball, and the disturbance of human players' presence in the image. In this paper, we propose a learning framework that trains a convolutional neural network to detect and localize a ball with high accuracy. It learns useful features from data directly without any prior knowledge. Therefore, the proposed method can effectively deal with the situation when the ball's color is changing in real-time. And it is more robust to the light condition and the disturbance of human players' presence. The effectiveness and accuracy of the method is verified using the collected data set, in comparison with the state-of-the-art method.
机译:作为与高动态环境交互的实时服务系统,乒乓球机器人系统对实时检测和定位乒乓球的准确性和鲁棒性有很高的要求。相对于其大小,球是高速旋转的物体。现有方法使用诸如颜色和​​形状之类的一般特征来检测和定位球,这严格取决于现有技术。他们的表现容易受到环境变化的影响,例如,光照条件,球的颜色以及图像中人类玩家在场的干扰。在本文中,我们提出了一个学习框架,该框架训练卷积神经网络以高精度检测和定位球。它无需任何先验知识即可直接从数据中学习有用的功能。因此,所提出的方法可以有效地处理球的颜色实时变化的情况。而且它对于光照条件和人类玩家的存在的干扰更加鲁棒。与最新方法相比,使用收集的数据集验证了该方法的有效性和准确性。

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