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Untangling Object-View Manifold for Multiview Recognition and Pose Estimation

机译:用于多视图识别和姿态估计的解体对象视图歧管

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The problem of multi-view/view-invariant recognition remains one of the most fundamental challenges to the progress of the computer vision. In this paper we consider the problem of modeling the combined object-viewpoint manifold. The shape and appearance of an object in a given image is a function of its category, style within category, viewpoint, and several other factors. The visual manifold (in any chosen feature representation space) given all these variability collectively is very hard and even impossible to model. We propose an efficient computational framework that can untangle such a complex manifold, and achieve a model that separates a view-invariant category representation, from category-invariant pose representation. We outperform the state of the art in the three widely used multiview dataset, for both category recognition, and pose estimation.
机译:多视图/查看不变识别的问题仍然是计算机视觉进程中最基本的挑战之一。 在本文中,我们考虑建模组合对象视点歧管的问题。 给定图像中对象的形状和外观是其类别,类别,视点和其他几个因素的类别的函数。 视觉歧管(在任何所选特征表示空间中)给出了所有这些变异性,非常努力,甚至不可能模拟。 我们提出了一种有效的计算框架,可以解开这种复杂的歧管,并实现从类别不变的姿态表示分开视图不变类别表示的模型。 我们在三个广泛使用的多视图数据集中优于本领域的技术,适用于类别识别和姿势估计。

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