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Imitation and learning of human hand gesture tasks of the 3D printed robotic hand by using artificial neural networks

机译:使用人工神经网络模仿和学习3D打印机器人手的人类手势任务

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In this study social learning and skill acquisition of a robotic hand via teaching and imitation was aimed. The subject of Human-Robot collaboration, which includes the theme of this paper, is a common field of experiments in our age of technology. Many disabilities can be defeated or many other things, which a human being would not be able to do, can be done with the help of this technology. As an example, a robotic hand can be a light of hope of a person who does not have a hand or wants to hold an object remotely over the internet. So that in our paper it is explained how a robotic hand can learn via imitation. In the experiment a robotic hand, which was printed by a 3D printer, was used and controlled wirelessly by a computer that recognizes human hand gesture via image processing algorithms. The communication between the computer and the robot is provided with a Bluetooth module. First of all, the image processing algorithms such as filtering and background subtraction were applied to the frames of the camera and extracted the features. Secondly, the process of teaching and testing of Artificial Neural Networks (ANNs) was made for the recognition of the hand and the gestures. After that, recognized actions were imitated by the robotic-hand hardware. Eventually, the learning of the robot via imitation was achieved with some small errors and the results are given at the end of the paper.
机译:在这项研究中,旨在通过教学和模仿来社交学习和掌握机械手的技能。包括本文主题在内的人机协作主题是当今技术时代的一个常见实验领域。借助这项技术,可以击败许多残疾人,或者可以完成人类无法做到的许多其他事情。例如,机械手可以是没有手或想通过互联网远程握住物体的人的希望之光。因此,在本文中,我们解释了如何通过模仿来学习机械手。在实验中,使用了由3D打印机打印的机械手,并由计算机无线控制,该计算机通过图像处理算法识别人的手势。计算机和机器人之间的通信配有蓝牙模块。首先,将诸如滤波和背景减法之类的图像处理算法应用于相机的帧并提取特征。其次,进行了人工神经网络(ANN)的教学和测试过程,以识别手和手势。此后,机器手硬件模仿了公认的动作。最终,通过模仿学习了机器人,但出现了一些小错误,结果在本文的结尾给出。

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