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Color object segmentation and tracking using flexible statistical model and level-set

机译:使用灵活统计模型和级别校准和跟踪跟踪

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摘要

This study presents an unsupervised novel algorithm for color image segmentation, object detection and tracking based on unsupervised learning step followed with a post processing step implemented with a variational active contour. Flexible learning method of a finite mixture of bounded generalized Gaussian distributions using the Minimum Message Length (MML) principle is developed to cope with the complexity of color images modeling. We deal here simultaneously with the issues of data-model fitting, determining automatically the optimal number of classes and selecting relevant features. Indeed, a feature selection step based on MML is implemented to eliminate uninformative features and therefore improving the algorithm's performance. For model's parameters estimation, the maximum likelihood (ML) was investigated and conducted via expectation maximization (EM) algorithm. The obtained object boundaries in the first step are tracked on each frame of a given sequence using a geometric level-set approach. The implementation has the advantage to help in improving the computational efficiency in high-dimensional spaces. We demonstrate the effectiveness of the developed segmentation method through several experiments. Obtained results reveal that our approach is able to achieve higher precision as compared to several other methods for color image segmentation and object tracking.
机译:本研究介绍了一种无监督的彩色图像分割算法,基于无监督的学习步骤,随后利用变形活动轮廓实现的后处理步骤,对象检测和跟踪。开发了使用最小消息长度(MML)原理的有限广义高斯分布的有限混合的灵活学习方法,以应对彩色图像建模的复杂性。我们与数据模型拟合问题同时交易,自动确定最佳类别并选择相关功能。实际上,实现了基于MML的特征选择步骤以消除未表征性功能,从而提高算法的性能。对于模型的参数估计,通过期望最大化(EM)算法研究并进行了最大似然(ML)。使用几何水平设定方法在给定序列的每一帧上跟踪第一步骤中所获得的对象边界。实施具有有利的优点,可以帮助提高高维空间的计算效率。我们通过几个实验证明了发育分割方法的有效性。获得的结果表明,与彩色图像分割和对象跟踪的其他方法相比,我们的方法能够实现更高的精度。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2021年第4期|5809-5831|共23页
  • 作者单位

    Department of Information Technology College of Computers and Information Technology Taif University Taif P.O. Box 11099 Taif 21944 Saudi Arabia LR-SITI Laboratoire Signal Image et Technologies de l'Information Universite de Tunis El Manar Tunis 1002 Tunisia;

    LR-SITI Laboratoire Signal Image et Technologies de l'Information Universite de Tunis El Manar Tunis 1002 Tunisia;

    Department of Information Technology College of Computers and Information Technology Taif University Taif P.O. Box 11099 Taif 21944 Saudi Arabia;

    Department of Industrial and Systems Engineering Faculty of Engineering University of Jeddah Jeddah Saudi Arabia;

    Department of Industrial and Systems Engineering Faculty of Engineering University of Jeddah Jeddah Saudi Arabia;

    The Concordia Institute for Information Systems Engineering (CIISE) Concordia University Montreal. QC H3G 1T7 Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Color image segmentation; Object tracking; Mixture bounded model; Feature selection; Minimum message length; Level-set;

    机译:彩色图像分割;对象跟踪;混合有界模型;特征选择;最小消息长度;lead-set.;

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