Machine Vision Method for Quantitative Statistics Analysis of Industrial Product Images

Jie Zan, Yaosheng Hu, Shoufeng Jin, Ruichao Zhang, Rafal Stanislawski
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Abstract

To address the problems of unstable accuracy, low efficiency, and subjective influence of manual counting, a machine vision-based method to count the quantity of tobacco shreds is proposed for the first time. In this paper, the complex tobacco shred image is obtained by backlight imaging. The adaptive threshold segmentation method is used to segment tobacco shreds. The pixel area of the tobacco shred area is calculated by connected domain labelling. Second, independent tobacco shreds and adhesive tobacco shreds were identified based on the pixel area, and the quantity of segmented tobacco shreds was counted for the first time. Subsequently, in complex scenarios (such as tobacco shreds adhesive and overlapping), an image is usually obtained by manually drawing the contours of the adhesive and overlapping tobacco shreds on the basis of primary statistics. Finally, different individuals are distinguished, segmentation is completed, and tobacco shred quantity statistics are realised. The experimental results show that the average accuracy is 100.0 % for quantitative statistics of independent tobacco shred images. For tobacco shred images with adhesive and overlapping interference, the minimum accuracy is 90 %, and the accuracy increases with the increase in tobacco shred quantity. Furthermore, the efficiency of the tobacco shred quantity statistics conducted by the method in this paper was only affected by complex scenarios. Compared to artificial processing, the efficiency was increased by more than 100 %. The work in this paper can provide the technical basis for measuring the dimensions of tobacco shreds.
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用于工业产品图像定量统计分析的机器视觉方法
针对人工计数精度不稳定、效率低、受主观影响大等问题,本文首次提出了一种基于机器视觉的烟丝数量计数方法。本文通过背光成像技术获取复杂的烟丝图像。采用自适应阈值分割法对烟丝进行分割。通过连通域标记法计算烟丝区域的像素面积。其次,根据像素面积识别独立烟丝和粘连烟丝,并首次统计分割烟丝的数量。随后,在复杂情况下(如烟丝粘连和重叠),通常会在初步统计的基础上,通过人工绘制粘连和重叠烟丝的轮廓线来获得图像。最后,区分不同个体,完成分割,实现烟丝数量统计。实验结果表明,对独立烟丝图像进行定量统计的平均准确率为 100.0%。对于有粘连和重叠干扰的烟草碎屑图像,最低准确率为 90%,并且准确率随着烟草碎屑数量的增加而提高。此外,本文方法进行烟草碎条数量统计的效率仅受复杂场景的影响。与人工处理相比,效率提高了 100 % 以上。本文的工作可以为测量烟丝的尺寸提供技术基础。
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