基于机器视觉的便携式轨道检测系统

Q4 Social Sciences Meta: Avaliacao Pub Date : 2023-08-11 DOI:10.1117/12.2687936
Qing Li, L. Wei, Xin Qu, Kai Cheng, Yanbo Chang, Houle Zhou
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引用次数: 0

摘要

随着交通运输业的快速发展,铁路运输发挥着至关重要的作用。手动检查方法耗时、劳动密集,而且主观性很强。因此,迫切需要一种更高效、更准确的探伤方法。该系统是一款基于机器视觉的便携式钢轨探伤设备,以YOLOv5为核心的深度学习算法。该系统通过摄像头捕捉铁轨的表面图像,并将其实时传输到主机进行分析。利用YOLOv5s强大的实时物体检测能力,该系统可以准确识别和定位各种类型的钢轨表面损伤,如裂纹、断裂和磨损。与传统的手工检测相比,该系统效率更高,大大提高了钢轨探伤的准确性和效率。它体积更小,携带方便,适合在各种环境和条件下工作,大大增强了设备的实用性和灵活性。
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Machine vision-based portable track inspection system
With the rapid development of the transportation industry, railway transportation plays a crucial role. Manual inspection methods are time-consuming, labor-intensive, and highly subjective. Therefore, there is an urgent need for a more efficient and accurate flaw detection method. This system is a portable rail flaw detection device based on machine vision, with YOLOv5 as its core deep learning algorithm. The system captures surface images of the rail through a camera and transmits them in real-time to the host computer for analysis. Leveraging the powerful real-time object detection capability of YOLOv5s, the system can accurately identify and locate various types of rail surface damages, such as cracks, fractures, and wear. Compared to traditional manual inspection, this system is more efficient and greatly improves the accuracy and efficiency of rail flaw detection. It has a smaller size and is convenient to carry, making it suitable for working in various environments and conditions, greatly enhancing the practicality and flexibility of the device.
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来源期刊
Meta: Avaliacao
Meta: Avaliacao Social Sciences-Education
CiteScore
0.40
自引率
0.00%
发文量
13
审稿时长
10 weeks
期刊最新文献
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