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Machine learned boundary definitions for an expert's tracing assistant in image processing.

机译:机器学习的边界定义,用于图像处理中的专家跟踪助手。

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摘要

Most image processing work addressing boundary definition tasks embeds the assumption that an edge in an image corresponds to the boundary of interest in the world. In straightforward imagery this is true, however it is not always the case. There are images in which edges are indistinct or obscure, and these images can only be segmented by a human expert. The work in this dissertation addresses the range of imagery between the two extremes of those straightforward images and those requiring human guidance to appropriately segment. By freeing systems of a priori edge definitions and building in a mechanism to learn the boundary definitions needed, systems can do better and be more broadly applicable. This dissertation presents the construction of such a boundary-learning system and demonstrates the validity of this premise on real data.; A framework was created for the task in which expert-provided boundary exemplars are used to create training data, which in turn are used by a neural network to learn the task and replicate the expert's boundary tracing behavior. This is the framework for the Expert's Tracing Assistant (ETA) system. For a representative set of nine structures in the Visible Human imagery, ETA was compared and contrasted to two state-of-the-art, user guided methods—Intelligent Scissors (IS) and Active Contour Models (ACM). Each method was used to define a boundary, and the distances between these boundaries and an expert's ground truth were compared. Across independent trials, there will be a natural variation in an expert's boundary tracing, and this degree of variation served as a benchmark against which these three methods were compared. For simple structural boundaries, all the methods were equivalent. However, in more difficult cases, ETA was shown to significantly better replicate the expert's boundary than either IS or ACM. In these cases, where the expert's judgement was most called into play to bound the structure, ACM and IS could not adapt to the boundary character used by the expert while ETA could.
机译:大多数处理边界定义任务的图像处理工作都嵌入了以下假设:图像中的边缘对应于世界上感兴趣的边界。在简单的图像中,这是事实,但并非总是如此。有些图像的边缘不清晰或模糊,这些图像只能由人类专家进行分割。本文的工作着眼于那些简单图像和需要人工指导以进行适当分割的两个极端之间的图像范围。通过释放先验边缘定义的系统,并建立一种机制来学习所需的边界定义,系统可以做得更好,并且可以更广泛地应用。本文提出了这种边界学习系统的构建,并证明了该前提对真实数据的有效性。为此任务创建了一个框架,其中使用了专家提供的边界示例来创建训练数据,然后再由神经网络使用该训练数据来学习任务并复制专家的边界跟踪行为。这是专家跟踪助手(ETA)系统的框架。对于可见人类图像中具有代表性的九种结构集,将ETA与两种最新的,用户指导的方法(智能剪刀(IS)和主动轮廓模型(ACM))进行了对比。每种方法都用于定义边界,并比较了这些边界与专家的实际情况之间的距离。在所有独立试验中,专家的边界描记都会有自然变化,这种变化的程度可作为比较这三种方法的基准。对于简单的结构边界,所有方法都是等效的。但是,在更困难的情况下,事实证明,ETA可以比IS或ACM更好地复制专家的边界。在这些情况下,专家的判断力最能约束结构,ACM和IS无法适应专家使用的边界特征,而ETA却可以。

著录项

  • 作者单位

    Colorado State University.;

  • 授予单位 Colorado State University.;
  • 学科 Computer Science.; Engineering Biomedical.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 p.4452
  • 总页数 214
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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