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Efficient optimization for labeling problems with prior information: Applications to natural and medical images.

机译:使用先验信息对问题进行标签的有效优化:应用于自然和医学图像。

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摘要

Labeling problem, due to its versatile modeling ability, is widely used in various image analysis tasks. In practice, certain prior information is often available to be embedded in the model to increase accuracy and robustness. However, it is not always straightforward to formulate the problem so that the prior information is correctly incorporated. It is even more challenging that the proposed model admits efficient algorithms to find globally optimal solution.;In this dissertation, a series of natural and medical image segmentation tasks are modeled as labeling problems. Each proposed model incorporates different useful prior information. These prior information includes ordering constraints between certain labels, soft user input enforcement, multi-scale context between over-segmented regions and original voxel, multi-modality context prior, location context between multiple modalities, star-shape prior, and gradient vector flow shape prior.;With judicious exploitation of each problem's intricate structure, efficient and exact algorithms are designed for all proposed models. The efficient computation allow the proposed models to be applied on large natural and medical image datasets using small memory footprint and reasonable time assumption. The global optimality guarantee makes the methods robust to local noise and easy to debug.;The proposed models and algorithms are validated on multiple experiments, using both natural and medical images. Promising and competitive results are shown when compared to state-of-art.
机译:由于其通用的建模能力,标签问题被广泛用于各种图像分析任务中。实际上,某些先验信息通常可用于嵌入模型中以提高准确性和鲁棒性。但是,提出问题并不总是那么简单,以便正确地合并现有信息。所提出的模型允许有效的算法来寻找全局最优解甚至更具挑战性。;本文将一系列自然和医学图像分割任务建模为标注问题。每个提出的模型都包含不同的有用先验信息。这些先验信息包括某些标签之间的排序约束,软用户输入强制,过度分割的区域和原始体素之间的多尺度上下文,多模态上下文先验,多种模态之间的位置上下文,星形先验和梯度矢量流形状通过明智地利用每个问题的复杂结构,为所有提出的模型设计了有效而精确的算法。高效的计算允许使用较小的内存占用量和合理的时间假​​设将建议的模型应用于大型自然和医学图像数据集。全局最优性保证使得该方法对局部噪声鲁棒并且易于调试。所提出的模型和算法在使用自然和医学图像的多个实验中得到了验证。与最新技术相比,显示出令人鼓舞的竞争结果。

著录项

  • 作者

    Bai, Junjie.;

  • 作者单位

    The University of Iowa.;

  • 授予单位 The University of Iowa.;
  • 学科 Computer engineering.;Medical imaging.;Computer science.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 206 p.
  • 总页数 206
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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