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Efficient nonparametric kernel density estimation for real time computer vision.

机译:用于实时计算机视觉的高效非参数内核密度估计。

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摘要

Many problems in computer vision, such as recognition, detection and segmentation, involve obtaining the probability density function describing an observed random quantity. While classical parametric densities are mostly unimodal, practical computer vision problems involve multivariate multimodal densities. In general, the forms of the underlying density functions are not known. Kernel density estimation techniques are quite general and powerful methods for this problem. In this dissertation, kernel density estimation techniques are utilized for building statistical representations for the appearance of objects. Such representations are used to facilitate different computer vision tasks such as moving objects detection and target tracking.; We describe an algorithm for background subtraction based on building a statistical representation of the scene background using kernel density estimation techniques. The model can handle situations where the background of the scene is cluttered and not completely static but contains small motions such as tree branches and bushes. We also describe how to build statistical representations of the foreground (moving objects). We present an approach to model the colors of homogeneous image regions using the kernel density estimators to estimate the color probability distributions. Modeling the color distribution of a homogeneous region has a variety of applications for object tracking and recognition. We use this approach to segment foreground regions corresponding to multiple people in order to track them through occlusion. We present a general probabilistic framework that uses maximum likelihood estimation to estimate the best arrangement for people in terms of 2D translation and depth arrangement that yields a segmentation for the foreground regions. We also use kernel density estimators to represent the joint feature-spatial distributions and use this representation to track the targets.; Kernel density estimators have a significant disadvantage in that they are computationally intensive. The dissertation also presents an efficient computational framework for kernel density estimation based on Fast Multipole methods that facilitates the use of this powerful statistical tool in real-time computer vision. We show the application of this algorithm for color modeling and tracking.
机译:计算机视觉中的许多问题,例如识别,检测和分割,都涉及获得描述观察到的随机量的概率密度函数。虽然经典的参数密度大多是单峰的,但实际的计算机视觉问题涉及多变量的多峰密度。通常,底层密度函数的形式是未知的。内核密度估计技术是解决此问题的非常通用且功能强大的方法。本文利用核密度估计技术建立物体外观的统计表示。这些表示用于促进不同的计算机视觉任务,例如运动对象检测和目标跟踪。我们基于使用内核密度估计技术构建场景背景的统计表示,描述了一种用于背景扣除的算法。该模型可以处理场景背景杂乱且并非完全静态但包含小运动(例如树枝和灌木丛)的情况。我们还将描述如何构建前景(运动对象)的统计表示。我们提出了一种使用核密度估计器对均质图像区域的颜色进行建模的方法,以估计颜色概率分布。对均匀区域的颜色分布进行建模具有各种对象跟踪和识别应用。我们使用这种方法来分割与多个人相对应的前景区域,以便通过遮挡对其进行跟踪。我们提出了一个通用的概率框架,该框架使用最大似然估计来根据2D翻译和深度排列(针对前景区域进行分割)来估计人的最佳排列。我们还使用核密度估计器来表示联合特征空间分布,并使用这种表示来跟踪目标。内核密度估计器的一个显着缺点是计算量大。论文还提出了一种基于快速多极子方法的核密度估计的有效计算框架,该框架促进了这种强大的统计工具在实时计算机视觉中的使用。我们展示了该算法在颜色建模和跟踪中的应用。

著录项

  • 作者

    Elgammal, Ahmed Mahmoud.;

  • 作者单位

    University of Maryland College Park.;

  • 授予单位 University of Maryland College Park.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 125 p.
  • 总页数 125
  • 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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