School of Future Technology, South China University of Technology, Guangzhou, 511436, China; Pazhou Lab, Guangzhou, 510330, China.
School of Future Technology, South China University of Technology, Guangzhou, 511436, China.
Neural Netw. 2023 Jul;164:489-496. doi: 10.1016/j.neunet.2023.04.043. Epub 2023 May 6.
Playing games between humans and robots have become a widespread human-robot confrontation (HRC) application. Although many approaches were proposed to enhance the tracking accuracy by combining different information, the problems of the intelligence degree of the robot and the anti-interference ability of the motion capture system still need to be solved. In this paper, we present an adaptive reinforcement learning (RL) based multimodal data fusion (AdaRL-MDF) framework teaching the robot hand to play Rock-Paper-Scissors (RPS) game with humans. It includes an adaptive learning mechanism to update the ensemble classifier, an RL model providing intellectual wisdom to the robot, and a multimodal data fusion structure offering resistance to interference. The corresponding experiments prove the mentioned functions of the AdaRL-MDF model. The comparison accuracy and computational time show the high performance of the ensemble model by combining k-nearest neighbor (k-NN) and deep convolutional neural network (DCNN). In addition, the depth vision-based k-NN classifier obtains a 100% identification accuracy so that the predicted gestures can be regarded as the real value. The demonstration illustrates the real possibility of HRC application. The theory involved in this model provides the possibility of developing HRC intelligence.
人与机器人之间的博弈已成为广泛应用的人机对抗(HRC)方式。尽管有许多方法被提出以结合不同信息来提高跟踪精度,但机器人的智能程度和运动捕捉系统的抗干扰能力等问题仍有待解决。在本文中,我们提出了一种基于自适应强化学习(RL)的多模态数据融合(AdaRL-MDF)框架,用于教授机器人手与人类玩石头剪刀布(RPS)游戏。它包括一个自适应学习机制来更新集成分类器、一个为机器人提供智慧的 RL 模型,以及一个提供抗干扰能力的多模态数据融合结构。相应的实验证明了 AdaRL-MDF 模型的上述功能。比较精度和计算时间表明,通过结合 k-最近邻(k-NN)和深度卷积神经网络(DCNN),集成模型具有较高的性能。此外,基于深度视觉的 k-NN 分类器可实现 100%的识别精度,从而可以将预测的手势视为真实值。演示说明了 HRC 应用的实际可能性。该模型所涉及的理论为开发 HRC 智能提供了可能性。