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Learning-Based Tracking of Complex Non-Rigid Motion

机译:基于学习的复杂非刚性运动跟踪

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This paper describes a novel method for tracking complex non-rigid motions by learning the intrinsic object structure. The approach builds on and extends the studies on non-linear dimensionality reduction for object representation, object dynamics modeling and particle filter style tracking. First, the dimensionality reduction and density estimation algorithm is derived for unsupervised learning of object intrinsic representation, and the obtained non-rigid part of object state reduces even to 2-3 dimensions. Secondly the dynamical model is derived and trained based on this intrinsic representation. Thirdly the learned intrinsic object structure is integrated into a particle filter style tracker. It is shown that this intrinsic object representation has some interesting properties and based on which the newly derived dynamical model makes particle filter style tracker more robust and reliable. Extensive experiments are done on the tracking of challenging non-rigid motions such as fish twisting with self-occlusion, large inter-frame lip motion and facial expressions with global head rotation. Quantitative results are given to make comparisons between the newly proposed tracker and the existing tracker. The proposed method also has the potential to solve other type of tracking problems.
机译:本文介绍了一种通过学习内在物体结构来跟踪复杂非刚性运动的新颖方法。该方法建立在非线性降维的基础上,并扩展了该过程,用于对象表示,对象动力学建模和粒子过滤器样式跟踪。首先,推导了降维和密度估计算法,用于对象内部本质表示的无监督学习,获得的对象状态的非刚性部分甚至减少到2-3维。其次,基于该内在表示来推导并训练动力学模型。第三,将学习到的固有对象结构集成到粒子过滤器样式跟踪器中。结果表明,这种内在对象表示具有一些有趣的属性,基于这些新的动态模型,新的动力学模型使粒子过滤器样式跟踪器更加健壮和可靠。在跟踪具有挑战性的非刚性运动方面进行了广泛的实验,例如具有自我遮挡的鱼扭曲,大帧间唇部运动和具有全局头部旋转的面部表情。给出定量结果以在新提出的跟踪器和现有跟踪器之间进行比较。所提出的方法还具有解决其他类型的跟踪问题的潜力。

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