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Joint Inference for Extracting Soft Biometric Text Descriptors from Patient Triage Images.

机译:从患者分诊图像中提取软生物特征文本描述符的联合推断。

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摘要

Disaster events can result in mass casualties and missing persons, giving rise to a need to provide information about victims to the public. This can be achieved by digitally documenting information available at emergency medical care centers in the form of pictures. The images and other identifying information, such as fingerprints, cannot be broadcast due to privacy concerns, leading to a need to extract appearance-related non-unique features from this data to facilitate locating missing persons. Using humans and machines to compare images is not feasible due to the scale of the situation and the nature (presence of blood and debris) of the images. Extracting a soft biometric text descriptor (text labels describing different soft biometric features) makes it possible to organize information about individuals from these images in a searchable format without revealing the person's identity. The main aim of this thesis is to extract soft biometric features from person images to label appearance-related information and make it available as a text descriptor.;We begin by presenting soft biometric feature detectors for patient images that include an ensemble-based face detection algorithm, template-based eye detection, and eyeglasses, hair color, and skin color detection. We also present a facial hair detector that uses a combination of face and hair information. The feature detection results indicate a need to combine and exploit feature relationships for better performance. We propose a novel probabilistic graphical model that consists of different feature detectors and exploits relationships between these features using a message-passing inference algorithm to build a coherent text descriptor. Further, to understand the utility and the nature of the text descriptors, we present a study based on human descriptions that aims at extracting order and structure information about the features.;We evaluate the performance of individual feature detectors for standard and triage images and establish the challenges posed by the dataset. Further, our text analysis shows extreme variability in human descriptions. However, we succeed in extracting some insights about the order of a natural text description. Through our evaluations of the graphical model, we show that for different feature detectors, datasets, and graph sizes the graphical model helps improve the accuracy of the text output. We also show that the performance of the graphical model depends on the individual nodes (feature detectors) and that the model can be used to improve the performance of the feature detector. This thesis illustrates the whole process from images to text descriptors while evaluating components as we proceed. This work presents an approach to extract text labels from images using computer vision, a probabilistic graphical model, and natural language processing techniques.
机译:灾难事件可能导致大量人员伤亡和失踪,因此有必要向公众提供有关受害者的信息。这可以通过以图片的形式数字记录紧急医疗中心提供的信息来实现。由于隐私问题,图像和其他识别信息(例如指纹)无法广播,导致需要从此数据中提取与外观相关的非唯一特征,以方便查找失踪人员。由于情况的规模和图像的性质(存在血液和碎片),使用人和机器比较图像是不可行的。提取软生物特征文本描述符(描述不同软生物特征的文本标签)可以从这些图像中以可搜索的格式组织有关个人的信息,而无需透露该人的身份。本论文的主要目的是从人的图像中提取软生物特征以标记与外观相关的信息,并将其用作文本描述符。我们首先介绍用于患者图像的软生物特征检测器,其中包括基于整体的面部检测算法,基于模板的眼睛检测以及眼镜,头发颜色和皮肤颜色检测。我们还将介绍一种使用面部和头发信息的组合的面部毛发检测器。特征检测结果表明需要组合和利用特征关系以获得更好的性能。我们提出了一个新颖的概率图形模型,该模型由不同的特征检测器组成,并使用消息传递推理算法来利用这些特征之间的关系来构建连贯的文本描述符。此外,为了了解文本描述符的用途和性质,我们提出了一项基于人类描述的研究,旨在提取有关特征的顺序和结构信息。;我们评估标准和分类图像的单个特征检测器的性能并建立数据集带来的挑战。此外,我们的文本分析显示了人类描述的极大变化。但是,我们成功地提取了一些有关自然文本描述顺序的见解。通过对图形模型的评估,我们表明对于不同的特征检测器,数据集和图形大小,图形模型有助于提高文本输出的准确性。我们还表明,图形模型的性能取决于各个节点(特征检测器),并且该模型可用于改善特征检测器的性能。本文阐述了从图像到文本描述符的整个过程,同时评估了进行中的组件。这项工作提出了一种使用计算机视觉,概率图形模型和自然语言处理技术从图像中提取文本标签的方法。

著录项

  • 作者

    Chhaya, Niyati Himanshu.;

  • 作者单位

    University of Maryland, Baltimore County.;

  • 授予单位 University of Maryland, Baltimore County.;
  • 学科 Computer Science.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 249 p.
  • 总页数 249
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:43:50

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