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Artificial neural network and its applications in quality process control, document recognition and biomedical imaging.

机译:人工神经网络及其在质量过程控制,文档识别和生物医学成像中的应用。

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摘要

In computer-vision based system a digital image obtained by a digital camera would usually have 24-bit color image. The analysis of an image with that many levels might require complicated image processing techniques and higher computational costs. But in real-time application, where a part has to be inspected within a few milliseconds, either we have to reduce the image to a more manageable number of gray levels, usually two levels (binary image), and at the same time retain all necessary features of the original image or develop a complicated technique. A binary image can be obtained by thresholding the original image into two levels. Therefore, thresholding of a given image into binary image is a necessary step for most image analysis and recognition techniques. In this thesis, we have studied the effectiveness of using artificial neural network (ANN) in pharmaceutical, document recognition and biomedical imaging applications for image thresholding and classification purposes. Finally, we have developed edge-based, ANN-based and region-growing based image thresholding techniques to extract low contrast objects of interest and classify them into respective classes in those applications.;In document recognition application, success of OCR mostly depends on the quality of the thresholded image. Non-uniform illumination, low contrast and complex background make it challenging in this application. In this thesis, optimal parameters for ANN-based local thresholding approach for gray scale composite document image with non-uniform background is proposed. An exhaustive search was conducted to select the optimal features and found that pixel value, mean and entropy are the most significant features at window size 3x3 in this application. For other applications, it might be different, but the procedure to find the optimal parameters is same. The average recognition rate 99.25% shows that the proposed 3 features at window size 3x3 are optimal in terms of recognition rate and PSNR compare to the ANN-based thresholding technique with different parameters presented in the literature.;In biomedical imaging application, breast cancer continues to be a public health problem. In this thesis we presented a computer aided diagnosis (CAD) system for mass detection and classification in digitized mammograms, which performs mass detection on regions of interest (ROI) followed by the benign-malignant classification on detected masses. Three layers ANN with seven features is proposed for classifying the marked regions into benign and malignant and 90.91% sensitivity and 83.87% specificity is achieved that is very much promising compare to the radiologist's sensitivity 75%.;Real-time quality inspection of gelatin capsules in pharmaceutical applications is an important issue from the point of view of industry's productivity and competitiveness. Computer vision-based automatic quality inspection and controller system is one of the solutions to this problem. Machine vision systems provide quality control and real-time feedback for industrial processes, overcoming physical limitations and subjective judgment of humans. In this thesis, we have developed an image processing system using edge-based image thresholding techniques for quality inspection that satisfy the industrial requirements in pharmaceutical applications to pass the accepted and rejected capsules.
机译:在基于计算机视觉的系统中,由数字照相机获得的数字图像通常将具有24位彩色图像。对具有多个级别的图像进行分析可能需要复杂的图像处理技术和更高的计算成本。但是在实时应用中,必须在几毫秒内检查零件,要么我们必须将图像缩小到更易于管理的灰度级别,通常是两个级别(二进制图像),然后同时保留所有原始图像的必要特征或开发复杂的技术。通过将原始图像分为两个级别,可以获取二进制图像。因此,将给定图像阈值化为二进制图像是大多数图像分析和识别技术的必要步骤。在本文中,我们研究了将人工神经网络(ANN)在制药,文档识别和生物医学成像应用中用于图像阈值化和分类的有效性。最后,我们开发了基于边缘,基于ANN和基于区域增长的图像阈值化技术,以提取感兴趣的低对比度对象并将其分类为这些应用程序中的相应类别。;在文档识别应用程序中,OCR的成功主要取决于阈值图像的质量。不均匀的照明,低对比度和复杂的背景使其在该应用中具有挑战性。本文针对背景不均匀的灰度复合文档图像,提出了基于ANN的局部阈值方法的最优参数。进行了详尽的搜索以选择最佳特征,并发现在此应用中,像素值,均值和熵是窗口大小3x3时最重要的特征。对于其他应用程序,它可能有所不同,但是找到最佳参数的过程是相同的。平均识别率99.25%表明,与文献中提出的基于ANN的具有不同参数的阈值化技术相比,在3x3窗口大小下建议的3个特征在识别率和PSNR方面是最优的;在生物医学成像应用中,乳腺癌仍在继续成为公共卫生问题。本文提出了一种计算机辅助诊断(CAD)系统,用于在数字化乳腺X线照片中进行质量检测和分类,该系统对目标区域(ROI)进行质量检测,然后对检测到的质量进行良恶性分类。提出了具有七种特征的三层人工神经网络,将标记区域分为良性和恶性,实现了90.91%的敏感性和83.87%的特异性,与放射科医生的75%的敏感性相比,非常有希望。从工业生产率和竞争力的角度来看,制药应用是一个重要的问题。基于计算机视觉的自动质量检查和控制器系统是解决此问题的方法之一。机器视觉系统为工业过程提供质量控制和实时反馈,克服了物理限制和人类的主观判断。在本文中,我们开发了一种基于边缘的图像阈值技术进行质量检查的图像处理系统,该技术可以满足制药行业通过合格和不合格胶囊的工业要求。

著录项

  • 作者

    Islam, Mohammed Jahirul.;

  • 作者单位

    University of Windsor (Canada).;

  • 授予单位 University of Windsor (Canada).;
  • 学科 Engineering Biomedical.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 129 p.
  • 总页数 129
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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