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Robust image segmentation using active contours: Level set approaches.

机译:使用活动轮廓进行稳健的图像分割:水平集方法。

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摘要

Image segmentation is a fundamental task in image analysis responsible for partitioning an image into multiple sub-regions based on a desired feature. Active contours have been widely used as attractive image segmentation methods because they always produce sub-regions with continuous boundaries, while the kernel-based edge detection methods, e.g. Sobel edge detectors, often produce discontinuous boundaries. The use of level set theory has provided more flexibility and convenience in the implementation of active contours. However, traditional edge-based active contour models have been applicable to only relatively simple images whose sub-regions are uniform without internal edges.; A partial solution to the problem of internal edges is to partition an image based on the statistical information of image intensity measured within sub-regions instead of looking for edges. Although representing an image as a piecewise-constant or unimodal probability density functions produces better results than traditional edge-based methods, the performances of such methods is still poor on images with sub-regions consisting of multiple components, e.g. a zebra on the field. The segmentation of this kind of multispectral images is even a more difficult problem. The object of this work is to develop advanced segmentation methods which provide robust performance on the images with non-uniform sub-regions.; In this work, we propose a framework for image segmentation which partitions an image based on the statistics of image intensity where the statistical information is represented as a mixture of probability density functions defined in a multi-dimensional image intensity space. Depending on the method to estimate the mixture density functions, three active contour models are proposed: unsupervised multi-dimensional histogram method, half-supervised multivariate Gaussian mixture density method, and supervised multivariate Gaussian mixture density method. The implementation of active contours is done using level sets.; The proposed active contour models show robust segmentation capabilities on images where traditional segmentation methods show poor performance. Also, the proposed methods provide a means of autonomous pattern classification by integrating image segmentation and statistical pattern classification.
机译:图像分割是图像分析中的一项基本任务,负责基于所需特征将图像划分为多个子区域。主动轮廓已被广泛用作有吸引力的图像分割方法,因为它们总是产生具有连续边界的子区域,而基于核的边缘检测方法例如Sobel边缘检测器通常会产生不连续的边界。水平集理论的使用为活动轮廓的实现提供了更大的灵活性和便利性。然而,传统的基于边缘的主动轮廓模型仅适用于子区域是均匀的,没有内部边缘的相对简单的图像。内部边缘问题的部分解决方案是根据子区域内测得的图像强度的统计信息对图像进行分区,而不是寻找边缘。尽管用分段常数或单峰概率密度函数表示图像比传统的基于边缘的方法产生更好的结果,但是这种方法的性能在子区域由多个成分组成的图像上仍然很差。场上的斑马。这种多光谱图像的分割甚至是更困难的问题。这项工作的目的是开发先进的分割方法,该方法可以在具有不均匀子区域的图像上提供强大的性能。在这项工作中,我们提出了一种图像分割框架,该框架基于图像强度的统计信息对图像进行分区,其中统计信息表示为在多维图像强度空间中定义的概率密度函数的混合。根据估计混合密度函数的方法,提出了三个活动轮廓模型:无监督多维直方图方法,半监督多元高斯混合密度方法和监督多元高斯混合密度方法。有效轮廓的实现是通过水平集完成的。所提出的主动轮廓模型在图像上显示出稳健的分割能力,而传统的分割方法却表现出较差的性能。而且,所提出的方法通过整合图像分割和统计模式分类来提供自主模式分类的手段。

著录项

  • 作者

    Lee, Cheolha Pedro.;

  • 作者单位

    North Carolina State University.;

  • 授予单位 North Carolina State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 146 p.
  • 总页数 146
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

  • 入库时间 2022-08-17 11:43:01

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