基于计算机视觉的电动轮椅障碍物检测

Phenphitcha Patthanajitsilp, P. Chongstitvatana
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引用次数: 3

摘要

本研究旨在利用电脑视觉设计电动轮椅障碍物侦测系统,为残障人士提供方便,减少意外发生的可能性。在这个系统中,距离阈值设置为当轮椅接近障碍物时发出警报。警报系统由安装在轮椅后面的智能手机摄像头组成。使用YOLOv3模型进行目标检测。为了提高系统的检测效率,开发了利用边缘检测方法检测柱子、门、墙壁边缘等障碍物的算法。因此,两种算法的使用使系统能够选择物体之间的障碍物检测和边缘检测。研究发现,系统可以选择检测障碍物的算法,准确率高达80%。此外,实验表明,该系统可以在碰撞前发出警告,准确率高达90%。此外,该系统还可以计算碰撞前的近似时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Obstacles Detection for Electric Wheelchair with Computer Vision
This research aims to present the detection system of an obstacle for electric wheelchair using computer vision in order to facilitate for disabled persons and reduce the possibilities of accidents. In this system, the distance threshold is set to alert when a wheelchair is approaching an obstacle. The alert system consists of the smartphone's camera attached to the back of a wheelchair. The YOLOv3 model was used for object detection. The researcher has developed an algorithm to detect obstacles such as pillars, doors, or edge of the wall with edge detection method to enhance the detection efficiency of the system. Therefore, the usage of two algorithms enables the system to choose the obstacle detection between objects and edge detection. The research found that the system can choose the algorithm to detect obstacles with an accuracy of up to 80%. Moreover, the experiment revealed that the system can alert warnings before collisions with an accuracy of up to 90%. Further, this system can also calculate the approximate time prior to the collision.
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