基于深度学习和数字图像处理的钢架多层结构螺栓松动检测

Yadian Zhao, Zhenglin Yang, Chao Xu
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引用次数: 0

摘要

螺栓连接广泛应用于航空航天、土木和机械工程领域。在其使用寿命期间,极端载荷或环境因素可能导致螺栓松动。提出了一种基于计算机视觉和图像处理的多层钢框架结构螺栓松动检测方法。实验结果表明,使用自主开发的螺栓目标数据集训练的Yolo-V5s深度学习模型对螺栓目标的检测准确率达到100%。该数据集由337张在自然场景中拍摄的闪电图像组成。对于角度计算,最终结果表明,识别误差小于5.8°,在轻微的相机角度(0 ~ 20°)下,最大误差甚至不超过2.8°。从而验证了该方法检测螺栓旋转松动的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bolt Loosening Detection for a Steel Frame Multi-Story Structure Based on Deep Learning and Digital Image Processing
Bolted joints are widely used in the field of aerospace, civil and mechanical engineering. During their service life, extreme loading or environmental factors can cause the loosening of bolts. In this paper, a bolt loosening detection method based on computer vision and image processing is developed to identify bolt rotation angle in a steel multi-story frame structure. The experimental results show that the bolt target detection accuracy can reach 100% by using the Yolo-V5s deep learning model trained with a self-developed bolt object dataset. The dataset consists of 337 bolt images captured in nature scenes. For the angle calculation, the final result shows that the identification error is less than 5.8°, and at a slight camera angle (0∼20°), the maximum error even does not exceed 2.8°. Thus, the effectiveness of this method for detecting rotary loosening of bolts is well validated.
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