Real-time Hand Gesture Recognition for Robotic Arm and Home Automation

A. Varshini, G. Bhavani, Vithya, R. Thilagavathy
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引用次数: 1

Abstract

Hand gestures are a symbolic and non-vocal language and are used by an individual to communicate. With computer vision, hand gestures can be detected and be used to talk with a capable computer, leading to the field of Human-Computer interconnection. The field of computer vision has been achieving cutting edge results with the advent of deep learning models. The work implements the Inception v3 architecture [1], which is a convolutional neural network. The model is retrained on our data set using Transfer learning, with which we reduce the requirements on computational resources, data and time. In this project, a hand gesture is performed in front of a web camera of a system. The gestures are predicted as one among six gestures with a corresponding probability. This project deals with the applications of the detected hand gestures in home automation and control of a robotic arm. Hand gestures are simple to perform, and it makes managing home effortless compared to manually intervening and providing instructions to a machine. In the home automation model, the gesture classification results from the system are transmitted to the microcontroller which switches on or off a home device. The robotic arm is a mechanical system which is used in manipulating the movement of lifting, moving, and placing the workpiece to lighten the work of man. It is equipped with servo motors and is controlled by our hand gestures to perform lifting and dropping of objects and rotation of the robotic arm.
机器人手臂和家庭自动化的实时手势识别
手势是一种象征性的非言语语言,是一个人用来交流的。通过计算机视觉,手势可以被检测到,并用于与有能力的计算机交谈,从而进入人机互联领域。随着深度学习模型的出现,计算机视觉领域已经取得了最前沿的成果。该工作实现了Inception v3架构[1],这是一个卷积神经网络。使用迁移学习在我们的数据集上重新训练模型,减少了对计算资源、数据和时间的要求。在这个项目中,一个手势是在系统的网络摄像头前执行的。这些手势被预测为六种手势中的一种,具有相应的概率。本项目主要研究手势检测在家庭自动化和机械臂控制中的应用。手势操作简单,与手动干预和向机器提供指令相比,它使管理家庭变得毫不费力。在家庭自动化模型中,来自系统的手势分类结果被传输到微控制器,微控制器打开或关闭家庭设备。机械臂是一种机械系统,用于操纵举起、移动和放置工件的运动,以减轻人的工作。它配备了伺服电机,通过我们的手势控制来完成物体的升降和机械臂的旋转。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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