机器学习增强塑料吸管微缺陷检测

IF 1.5 4区 材料科学 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY
Zhisheng Zhang, Peng Meng, Yaxin Yang, Jian Zhu
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引用次数: 0

摘要

塑料吸管是众所周知的辅助人类饮用液体的工具,但大多数塑料吸管都存在黑点缺陷、头部问题、压力管缺陷、密封皱纹等微缺陷。这些缺陷的人工检测存在效率低、误检率高、人工过多等缺点。本文提出了一种基于机器视觉的自适应高精度检测方法。提出了同态滤波、Nobuyuki Otsu和形态学打开操作等算法的串行综合,获得了性能良好的塑料吸管二值图像,并进一步发现可以设计卷积神经网络实现黑点缺陷的实时识别,其中边角检测算法对吸管边缘点进行了线性拟合,有效检测出封口褶皱缺陷。我们还证明了多阈值分类算法可以有效地检测出头部问题和压力管缺陷。基于机器视觉的检测系统成功地克服了人工检测的缺点,检测效率高,自适应检测多缺陷的准确率达到96.85%。本研究可以有效帮助吸管企业实现高质量的自动化生产,并借助机器学习促进机器视觉在塑料吸管缺陷上的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Augmented Micro-Defect Detection on Plastic Straw
Plastic straws are well-known tools to assist human beings in drinking fluid, but most of them have micro-defects including black spot defects, head problems, pressure tube defects, and sealing wrinkles. The manual detection of these defects has drawbacks such as low efficiency, a high false detection rate, and excessive labor. This paper proposed machine vision-based detection with self-adaption and high-accuracy characteristics. A serial synthesis of algorithms including homomorphic filtering, Nobuyuki Otsu, and morphological opening operations is proposed to obtain plastic straws with binary images with good performance, and it was further found that the convolutional neural network can be designed to realize the real-time recognition of black spot defects, where the corner detection algorithm demonstrates the linear fitting of the edge point of the straw with the effective detection of sealing wrinkle defects. We also demonstrated that the multi-threshold classification algorithm is used to detect defects effectively for head problems and pressure tube defects. The detection system based on machine vision successfully overcomes shortcomings of manual inspection, which has high inspection efficiency and adaptively detects multiple defects with 96.85% accuracy. This research can effectively help straw companies achieve high-quality automated production and promotes the application of machine vision in plastic straw defects with the aid of machine learning.
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来源期刊
Micro & Nano Letters
Micro & Nano Letters 工程技术-材料科学:综合
CiteScore
3.30
自引率
0.00%
发文量
58
审稿时长
2.8 months
期刊介绍: Micro & Nano Letters offers express online publication of short research papers containing the latest advances in miniature and ultraminiature structures and systems. With an average of six weeks to decision, and publication online in advance of each issue, Micro & Nano Letters offers a rapid route for the international dissemination of high quality research findings from both the micro and nano communities. Scope Micro & Nano Letters offers express online publication of short research papers containing the latest advances in micro and nano-scale science, engineering and technology, with at least one dimension ranging from micrometers to nanometers. Micro & Nano Letters offers readers high-quality original research from both the micro and nano communities, and the materials and devices communities. Bridging this gap between materials science and micro and nano-scale devices, Micro & Nano Letters addresses issues in the disciplines of engineering, physical, chemical, and biological science. It places particular emphasis on cross-disciplinary activities and applications. Typical topics include: Micro and nanostructures for the device communities MEMS and NEMS Modelling, simulation and realisation of micro and nanoscale structures, devices and systems, with comparisons to experimental data Synthesis and processing Micro and nano-photonics Molecular machines, circuits and self-assembly Organic and inorganic micro and nanostructures Micro and nano-fluidics
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