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High performance image processing techniques in automated identification systems.

机译:自动识别系统中的高性能图像处理技术。

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摘要

This dissertation addresses different image processing problems faced during the development of two different identification systems (i) an automated system for postmortem identification using dental records (dental radiographs), (ii) an automated ear identification system. Automating the postmortem identification of deceased individuals based on dental characteristics is receiving increased attention especially with the large number of victims encountered in mass disasters, as 9/11 attack, and Tsunami. The Automated Dental Identification System (ADIS) can be used by law enforcement agencies to locate missing persons using databases of dental x-rays of human remains and dental scans of missing or unidentified persons. ADIS provides functionality for users to upload the reference records, and submit identification queries using submitted records. ADIS then produces a short matching list of possible matches for the dental experts to verify. The ear identification system can be used at access point of restricted areas; this system helps identify a person from surveillance videotapes.;This dissertation introduces new high performance approaches for three image-processing problems of the ADIS record preprocessing stage. For the first, we introduce an automatic hierarchical approach to the problem of cropping dental image records into films. Our approach is heavily based on concepts of mathematical morphology and shape analysis. Testing reflects an overall error of ∼ 3%. For the second, we address the problem of teeth contour extraction using active contour without edges. This technique is based on the intensity properties of the overall region of the tooth image. It extracts a very smooth and accurate tooth contour. For the third, we enhance the existing techniques for automatic classification of teeth into four classes (molars, premolars, canines, and incisors); as well as the construction of a dental chart, which is a data structure that guides tooth-to-tooth matching. We tackle this composite problem using appearance-based features (low computational-cost) for assigning an initial class, followed by applying a string matching with don't care technique based on teeth neighborhood rules. Adding the don't care character allows the technique to work in the presence of missing tooth, which represents 21% of the database. Our approach achieves 82% teeth labeling accuracy based on a large test dataset of films.;For ADIS, also we introduce new techniques for the problem of fast dental image retrieval. We use Eigen images to reduce the dimensionality of each tooth, as well as other teeth contour descriptors. The main features of this search engine are that it completes the search in order of seconds and it reaches a reasonable accuracy with a relatively short candidate list.;For ear identification, we develop different components of a viable automated method for ear identification system. We automate the Iannarelli ear identification system, which had been used manually for years. We extract the ear external and internal curves, and use these curves to calculate the different Iannarelli distance measurements. We evaluated the system performance based on statistical analysis of a large dataset of thousands ear images, where the identification rate is 90% for rank 1 image.
机译:本论文解决了在开发两种不同的识别系统期间所面临的不同图像处理问题:(i)使用牙科记录(牙科X光片)进行死后识别的自动化系统;(ii)耳朵自动识别系统。基于牙齿特征自动对死者进行事后鉴定,正受到越来越多的关注,特别是在9/11袭击和海啸等大规模灾难中遇到的大量受害者。执法机构可以使用自动牙齿识别系统(ADIS),使用人体遗骸的牙科X射线数据库以及失踪或身份不明人士的牙齿扫描图像来查找失踪人员。 ADIS为用户提供了上载参考记录以及使用已提交记录提交标识查询的功能。然后,ADIS生成可能匹配的简短匹配列表,供牙科专家进行验证。耳朵识别系统可用于限制区域的接入点;该系统有助于从监视录像带中识别人员。本文针对ADIS记录预处理阶段的三个图像处理问题介绍了新的高性能方法。首先,我们引入了一种自动分层方法来解决将牙科图像记录裁剪成胶片的问题。我们的方法主要基于数学形态学和形状分析的概念。测试表明总误差约为3%。第二,我们解决了使用没有边缘的有效轮廓提取牙齿轮廓的问题。该技术基于牙齿图像整个区域的强度特性。它提取出非常光滑且精确的牙齿轮廓。第三,我们增强了将牙齿自动分类为四类(磨牙,前磨牙,犬齿和门齿)的现有技术;以及牙科图表的构建,该图表是指导牙齿间匹配的数据结构。我们使用基于外观的功能(较低的计算成本)来分配初始类来解决此复合问题,然后基于牙齿邻域规则应用不关心技术的字符串匹配。添加“无关”字符可使该技术在缺少牙齿的情况下工作,该牙齿占数据库的21%。基于大量的胶片测试数据,我们的方法可达到82%的牙齿贴标精度。对于ADIS,我们还引入了新技术来解决快速牙齿图像检索的问题。我们使用本征图像来减少每个牙齿以及其他牙齿轮廓描述符的尺寸。该搜索引擎的主要特点是,它可以在几秒钟的时间内完成搜索,并且在相对较短的候选列表中达到了合理的准确性。对于耳朵识别,我们开发了一种可行的自动化耳朵识别系统方法的不同组件。我们将人工使用多年的Iannarelli耳朵识别系统自动化。我们提取耳朵的外部和内部曲线,并使用这些曲线来计算不同的Iannarelli距离测量值。我们基于对数千个耳部图像的大型数据集的统计分析,评估了系统性能,其中对1级图像的识别率为90%。

著录项

  • 作者

    Abaza, Ayman.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Engineering Biomedical.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 155 p.
  • 总页数 155
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;无线电电子学、电信技术;
  • 关键词

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