Using hyperquadrics for shape recovery from range data

Song Han, Dmitry Goldgof, K. Bowyer
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引用次数: 52

Abstract

Superquadric is an implicit model which was recently introduced and successfully applied in computer vision research. The authors introduce its generalization, the use of the hyperquadric models, for computer vision applications, and focus on its utilization for shape recovery from range data. The hyperquadric model can be composed of any number of terms. Its geometric bound is an arbitrary convex polyhedron, and thus it can describe more complex shapes than the superquadric. A fitting method is proposed that starts with a rough fit with only two terms in the 2-D case or three terms in the 3-D case, and then adds additional terms to improve the fit. The experiments indicate that the use of hyperquadrics is a promising paradigm for shape representation and recovery in computer vision. >
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利用超二次曲面对距离数据进行形状恢复
超二次型隐式模型是近年来引入并成功应用于计算机视觉研究的一种隐式模型。作者介绍了超二次曲面模型在计算机视觉中的应用,并重点介绍了超二次曲面模型在距离数据形状恢复中的应用。超二次模型可以由任意数量的项组成。它的几何边界是一个任意的凸多面体,因此它可以描述比超二次曲面更复杂的形状。提出了一种二维情况下仅两项的粗拟合或三维情况下仅三项的粗拟合方法,然后通过增加附加项来改善拟合。实验表明,超二次曲面是计算机视觉中形状表示和恢复的一个很有前途的范例。>
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