首页> 外文会议>International Conference on Advanced Concepts for Intelligent Vision Systems(ACIVS 2006); 20060918-21; Antwerp(BE) >Comparison of Statistical and Shape-Based Approaches for Non-rigid Motion Tracking with Missing Data Using a Particle Filter
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Comparison of Statistical and Shape-Based Approaches for Non-rigid Motion Tracking with Missing Data Using a Particle Filter

机译:使用粒子滤波器对缺失数据的非刚性运动跟踪进行统计和基于形状的方法的比较

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摘要

Recent developments in dynamic contour tracking in video sequences are based on prediction using dynamical models. The parameters of these models are fixed by learning the dynamics from a training set to represent plausible motions, such as constant velocity or critically damped oscillations. Thus, a problem arise in cases of non-constant velocity and unknown interframe motion, i.e. unlearned motions, and the CONDENSATION algorithm fails to track the dynamic contour. The main contribution of this work is to propose an adaptative dynamical model which parameters are based on non-linearon-gaussian observation models. We study two different approaches, one statistical and one shape-based, to estimate the deformation of an object and track complex dynamics without learning from a training set neather the dynamical nor the deformation models and under the constraints of missing data, non-linear deformation and unknown interframe motion. The developed approaches have been successfully tested on several sequences.
机译:视频序列中动态轮廓跟踪的最新发展基于使用动态模型的预测。这些模型的参数是通过从训练集中学习动力学来固定的,以表示合理的运动,例如恒定速度或临界阻尼振荡。因此,在非恒定速度和未知帧间运动(即,未学习的运动)的情况下会出现问题,并且CONDENSATION算法无法跟踪动态轮廓。这项工作的主要贡献是提出了一种自适应动力学模型,该模型的参数基于非线性/非高斯观测模型。我们研究了两种不同的方法,一种是统计方法,一种是基于形状的方法,用于估计对象的变形并跟踪复杂的动力学,而无需从训练集(包括动力学模型或变形模型)中学习,并且在缺少数据的约束下进行非线性变形和未知的帧间运动。所开发的方法已在多个序列上成功测试。

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