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基于在线跟踪系统的砂带抛光工件火花图像研究

A Study of an Online Tracking System for Spark Images of Abrasive Belt-Polishing Workpieces.

机构信息

School of Mechanical and Precision Instrument Engineering, Xi'an University of Technology, Xi'an 710048, China.

School of Computer Science, Xijing University, Xi'an 710123, China.

出版信息

Sensors (Basel). 2023 Feb 10;23(4):2025. doi: 10.3390/s23042025.

Abstract

During the manual grinding of blades, the workers can estimate the material removal rate based on their experiences from observing the characteristics of the grinding sparks, leading to low grinding accuracy and low efficiency and affecting the processing quality of the blades. As an alternative to the recognition of spark images by the human eye, we used the deep learning algorithm YOLO5 to perform target detection on spark images and obtain spark image regions. First the spark images generated during one turbine blade-grinding process were collected, and some of the images were selected as training samples, with the remaining images used as test samples, which were labelled with LabelImg. Afterwards, the selected images were trained with YOLO5 to obtain an optimisation model. In the end, the trained optimisation model was used to predict the images of the test set. The proposed method was able to detect spark image regions quickly and accurately, with an average accuracy of 0.995. YOLO4 was also used to train and predict spark images, and the two methods were compared. Our findings show that YOLO5 is faster and more accurate than the YOLO4 target detection algorithm and can replace manual observation, laying a specific foundation for the automatic segmentation of spark images and the study of the relationship between the material removal rate and spark images at a later stage, which has some practical value.

摘要

在叶片的手动磨削过程中,工人可以根据观察磨削火花特征的经验来估计材料去除率,导致磨削精度低、效率低,影响叶片的加工质量。作为替代人工肉眼识别火花图像的方法,我们使用深度学习算法 YOLO5 对火花图像进行目标检测,并获得火花图像区域。首先收集一次涡轮叶片磨削过程中产生的火花图像,选择其中一些图像作为训练样本,其余图像作为测试样本,并用 LabelImg 进行标记。然后,使用 YOLO5 对选定的图像进行训练,以获得优化模型。最后,使用训练好的优化模型对测试集的图像进行预测。所提出的方法能够快速准确地检测火花图像区域,平均准确率为 0.995。还使用 YOLO4 对火花图像进行训练和预测,并对这两种方法进行了比较。研究结果表明,YOLO5 比 YOLO4 目标检测算法更快、更准确,可以替代人工观察,为火花图像的自动分割以及后期研究材料去除率与火花图像之间的关系奠定了具体基础,具有一定的实用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a4cd/9966948/fb810edcb152/sensors-23-02025-g001.jpg

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