基于图像处理的轮式机器人手势控制

Theodore Bismo Waskito, S. Sumaryo, C. Setianingsih
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引用次数: 3

摘要

基于形状识别的计算机视觉在人机交互方面具有很大的潜力。手势可以作为人类与计算机交互的符号,在手语中使用各种手势是首选的。各种任务可以用来设置远程控制功能,控制机器人等等。使用计算机视觉处理图像或手绘的过程称为图像处理。在本文中,轮式机器人控制系统可以根据给定的手势指令进行移动。有6种形式的手势作为输入,每种手势都为轮式机器人的运动提供一个命令。用于对每个手势进行分类的方法,即卷积神经网络(CNN)。CNN是人工神经网络(ANN)的一个分支,可以执行提取特征并创建所需的类别。分类结果将被执行并发送给无线机器人进行运动。这个系统的结果是轮式机器人跟随给定的手势运动。影响该系统的变量是训练参数和环境参数,包括光强度、距离和倾斜角。整个系统的准确率为91.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wheeled Robot Control with Hand Gesture based on Image Processing
Computer vision based on shape recognition has a lot of potential in human and computer interaction. Hand gestures can be used as symbols of human interaction with computers which are preferred in the use of various hand gestures in sign language. Various tasks can be used to set remote control functions, control robots, and so on. The process of processing images or hand drawings using computer vision is called image processing. In this paper, a wheeled robot control system can be moved according to the given hand gesture commands. There are 6 forms of hand gestures that are made as input, and each hand gesture gives one command for the movement of a wheeled robot. The method used to classify each hand gesture, namely Convolutional Neural Network (CNN). CNN is a branch of the Artificial Neural Network (ANN) that can perform extraction features and create desired categories. The results of the classification will be carried out and sent to a wireless robot to run a movement. The result of this system is the movement of the wheeled robot following the given hand gestures. Variables that affect this system are training parameters and environmental parameters which include the amount of light intensity, distance, and tilt angle. The accuracy of the entire system obtained is 91.33%.
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