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Modeling Self-Occlusions/Disocclusions in Dynamic Shape and Appearance Tracking for Obtaining Precise Shape

机译:在动态形状和外观跟踪中建模自遮挡/遮挡以获得精确形状

摘要

We present a method to determine the precise shape of a dynamic object from video. This problem is fundamental to computer vision, and has a number of applications, for example, 3D video/cinema post-production, activity recognition and augmented reality. Current tracking algorithms that determine precise shape can be roughly divided into two categories: 1) Global statistics partitioning methods, where the shape of the object is determined by discriminating global image statistics, and 2) Joint shape and appearance matching methods, where a template of the object from the previous frame is matched to the next image. The former is limited in cases of complex object appearance and cluttered background, where global statistics cannot distinguish between the object and background. The latter is able to cope with complex appearance and a cluttered background, but is limited in cases of camera viewpoint change and object articulation, which induce self-occlusions and self-disocclusions of the object of interest. The purpose of this thesis is to model self-occlusion/disocclusion phenomena in a joint shape and appearance tracking framework. We derive a non-linear dynamic model of the object shape and appearance taking into account occlusion phenomena, which is then used to infer self-occlusions/disocclusions, shape and appearance of the object in a variational optimization framework. To ensure robustness to other unmodeled phenomenathat are present in real-video sequences, the Kalman filter is used for appearanceupdating. Experiments show that our method, which incorporates the modeling of self-occlusion/disocclusion, increases the accuracy of shape estimation in situations of viewpoint change and articulation, and out-performs current state-of-the-art methods for shape tracking.
机译:我们提出一种从视频确定动态对象的精确形状的方法。这个问题是计算机视觉的基础,并且具有许多应用,例如3D视频/电影后期制作,活动识别和增强现实。当前确定精确形状的跟踪算法可大致分为两类:1)全局统计量划分方法,其中通过区分全局图像统计量确定对象的形状; 2)联合形状和外观匹配方法,其中模板为前一帧的对象与下一张图像匹配。前者在对象外观复杂且背景杂乱的情况下受到限制,而全局统计数据无法区分对象和背景。后者能够应付复杂的外观和杂乱的背景,但是在摄像机视点变化和对象关节运动的情况下受到限制,这会引起目标对象的自遮挡和自遮挡。本文的目的是在关节形状和外观跟踪框架中对自闭塞/自闭塞现象进行建模。我们考虑了遮挡现象,得出了对象形状和外观的非线性动力学模型,然后将其用于在变量优化框架中推断对象的自遮挡/遮挡,形状和外观。为了确保对真实视频序列中存在的其他未建模现象的鲁棒性,卡尔曼滤波器用于外观更新。实验表明,我们的方法结合了自闭塞/自闭塞的模型,在视点改变和清晰表达的情况下提高了形状估计的准确性,并且胜过了当前最新的形状跟踪方法。

著录项

  • 作者

    Yang Yanchao;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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