首页> 外文会议>International Conference on Circuit, Power and Computing Technologies >Detection of defective pharmaceutical capsules and its types of defect using image processing techniques
【24h】

Detection of defective pharmaceutical capsules and its types of defect using image processing techniques

机译:使用图像处理技术检测有缺陷的药物胶囊及其缺陷类型

获取原文

摘要

Real-time quality inspection of capsules manufacturing in pharmaceutical applications is an important issue from the point of view of industry productivity, competitiveness and quality aspect of the product. Pharmaceutical products are susceptible to several common flows like incorrect size or color, surface defect, missing, broken capsules. To guarantee every capsule is free of defects, each capsule must be inspected individually. In this paper we have compared different approaches of image processing for detection of defective capsule and presence of category of defects. All (sectorization of DFT transformed images for feature extraction, object counting, gray intensity distribution, color intensity distribution, GLCM, area counting and individual area calculation) methods proposed and compared in this paper are applied over database of 39 images of pharmaceutical capsule strips speeded over 3 different classes (single color, double color and Multi color). The experiment has been carried out to detect 5 different possible types of defects i.e. missing, broken, missing and broken, improper alignment and surface defect. The attempt has also been made to indicate the count of number of missing tablets/capsules in the strip. Overall Average and sum of area is calculated for the performance evaluation to detect the presence of defects. The range of differences obtained among the defective capsule images and defect free image has been analyzed to classify the category of defects present in the image. It has been observed that individual object area calculation, gray intensity density calculation and GLCM works better compared to all other approaches.
机译:从工业生产率,产品竞争力和产品质量的角度来看,在制药领域中胶囊制造的实时质量检查是一个重要的问题。药品易受几种常见流量的影响,例如尺寸或颜色不正确,表面缺陷,丢失,胶囊破裂。为了确保每个胶囊没有缺陷,必须分别检查每个胶囊。在本文中,我们比较了用于检测缺陷胶囊和缺陷种类的图像处理的不同方法。本文提出并比较的所有方法(用于特征提取,对象计数,灰度强度分布,颜色强度分布,GLCM,面积计数和单个面积计算的DFT变换图像的扇区化)都应用于39个速度加快的药用胶囊条图像数据库中超过3种不同的类别(单色,双色和多色)。已经进行了该实验以检测5种可能的缺陷类型,即缺失,断裂,缺失和断裂,不适当的对准和表面缺陷。还尝试指出条中丢失的片剂/胶囊的数量。计算总体平均值和面积总和以进行性能评估,以检测缺陷的存在。已经分析了在缺陷胶囊图像和无缺陷图像之间获得的差异范围,以对图像中存在的缺陷类别进行分类。已经观察到,与所有其他方法相比,单个对象区域计算,灰度强度密度计算和GLCM效果更好。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号