基于MLP神经网络和支持向量机的医用小瓶异物检测与分类

Seyed Mehdi Moghadas, Navid Rabbani
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引用次数: 3

摘要

医用液体中存在外来物质会给患者和公司带来严重的问题。为了避免这些问题,我们非常需要一个自动程序来识别含有异物的瓶子。本文提出了一种基于机器视觉的药瓶、小瓶异物检测与分类新方法。生产线上安装了几台摄像机,从药瓶中获取图像。对捕获的图像进行阈值处理,以收集一组连接的组件。对于每个气泡,计算一组新的特征,将特征向量输入分类器,将气泡中的异物与气泡区分,并将其分为四组,这样操作员就可以找到问题的根源并修复导致问题的机器故障。本文还介绍了一种新颖的方法来发现瓶子表面的划痕和斑点,并将其与异物区分开来。该方法的检测率超过97%,分类率超过93%。
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Detection and classification of foreign substances in medical vials using MLP neural network and SVM
Presence of foreign substances in medical liquids can make serious problems for both patients and companies. To avoid these problems, there is a vast need of an automatic process to identify the bottles with foreign substances. In this paper, a new method is proposed to detect and classify the foreign substances in medicine bottles and vials based on machine vision. Several cameras are located in production line, to get images from medicine bottles. The captured images are thresholded to gather a collection of connected components. For each one a set of novel features are computed, the feature vectors are fed into a classifier, to distinguish the foreign substances from bubbles and also classify them in four groups, so the operator can find the source of the problem and fixes the failure in machine which causes it. An original method is also described to find out the scratches and spots on the bottle surface and distinguish them from foreign substances. The proposed method achieves detection rates over 97% and classification rates over 93%.
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