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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Statistical cue integration in DAG deformable models
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Statistical cue integration in DAG deformable models

机译:DAG变形模型中的统计提示集成

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摘要

Deformable models are a useful modeling paradigm in computer vision. A deformable model is a curve, a surface, or a volume, whose shape, position, and orientation are controlled through a set of parameters. They can represent manufactured objects, human faces and skeletons, and even bodies of fluid. With low-level computer vision and image processing techniques, such as optical flow, we extract relevant information from images. Then, we use this information to change the parameters of the model iteratively until we find a good approximation of the object in the images. When we have multiple computer vision algorithms providing distinct sources of information (cues), we have to deal with the difficult problem of combining these, sometimes conflicting contributions in a sensible way. In this paper, we introduce the use of a directed acyclic graph (DAG) to describe the position and Jacobian of each point of deformable models. This representation is dynamic, flexible, and allows computational optimizations that would be difficult to do otherwise. We then describe a new method for statistical cue integration method for tracking deformable models that scales well with the dimension of the parameter space. We use affine forms and affine arithmetic to represent and propagate the cues and their regions of confidence. We show that we can apply the Lindeberg theorem to approximate each cue with a Gaussian distribution, and can use a maximum-likelihood estimator to integrate them. Finally, we demonstrate the technique at work in a 3D deformable face tracking system on monocular image sequences with thousands of frames.
机译:可变形模型是计算机视觉中一种有用的建模范例。变形模型是曲线,表面或体积,其形状,位置和方向是通过一组参数控制的。它们可以代表人造物体,人脸和骨骼,甚至流体。利用低级计算机视觉和图像处理技术(例如光流),我们可以从图像中提取相关信息。然后,我们使用此信息来迭代地更改模型的参数,直到在图像中找到对象的良好近似为止。当我们有多种提供不同信息源(线索)的计算机视觉算法时,我们必须处理将这些,有时是冲突的贡献以明智的方式组合在一起的难题。在本文中,我们介绍了使用有向无环图(DAG)来描述可变形模型的每个点的位置和雅可比行列式。这种表示是动态的,灵活的,并且允许进行计算优化,否则这些优化将很难做到。然后,我们描述一种用于跟踪可变形模型的统计提示集成方法的新方法,该方法可以随参数空间的尺寸很好地缩放。我们使用仿射形式和仿射算法来表示和传播线索及其置信区域。我们证明了我们可以应用Lindeberg定理对具有高斯分布的每个线索进行近似,并可以使用最大似然估计器对其进行积分。最后,我们在具有数千帧的单眼图像序列的3D变形人脸跟踪系统中演示了该技术。

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