Comparative Study of Computer Vision Based Line Followers Using Raspberry Pi and Jetson Nano

Gunawan Dewantoro, Jamil Mansuri, Fransiscus Dalu Setiaji
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引用次数: 2

Abstract

The line follower robot is a mobile robot which can navigate and traverse to another place by following a trajectory which is generally in the form of black or white lines. This robot can also assist human in carrying out transportation and industrial automation. However, this robot also has several challenges with regard to the calibration issue, incompatibility on wavy surfaces, and also the light sensor placement due to the line width variation. Robot vision utilizes image processing and computer vision technology for recognizing objects and controlling the robot motion. This study discusses the implementation of vision based line follower robot using a camera as the only sensor used to capture objects. A comparison of robot performance employing different CPU controllers, namely Raspberry Pi and Jetson Nano, is made. The image processing uses an edge detection method which detect the border to discriminate two image areas and mark different parts. This method aims to enable the robot to control its motion based on the object captured by the webcam. The results show that the accuracies of the robot employing the Raspberry Pi and Jetson Nano are 96% and 98%, respectively.
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基于计算机视觉的Raspberry Pi和Jetson Nano直线跟随器的比较研究
直线跟随机器人是一种移动机器人,它可以通过遵循通常呈黑线或白线形式的轨迹来导航和遍历到另一个地方。该机器人还可以帮助人类进行运输和工业自动化。然而,该机器人在校准问题、波状表面上的不兼容性以及由于线宽变化而导致的光传感器放置方面也存在一些挑战。机器人视觉利用图像处理和计算机视觉技术来识别物体并控制机器人的运动。本研究讨论了基于视觉的线跟随机器人的实现,该机器人使用相机作为唯一用于捕捉物体的传感器。比较了使用不同CPU控制器(即Raspberry Pi和Jetson Nano)的机器人性能。图像处理使用检测边界的边缘检测方法来区分两个图像区域并标记不同的部分。这种方法旨在使机器人能够根据网络摄像头捕捉到的物体来控制其运动。结果表明,采用树莓派和Jetson Nano的机器人的准确率分别为96%和98%。
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24 weeks
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