A linear blending scheme for rigid and non-rigid deformations

Gengdai Liu, K. Anjyo
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Abstract

Linear blending techniques based on generalized barycentric cordinates have been well recognized in a digital production workplace for shape deformation due to its simplicity. However, the dense weights, non-rigid deformations and the lack of an intuitive control interface limit its practical use. In this paper we present a novel linear blending scheme utilizing existing barycentric coordinates to overcome these difficulties. The scheme enables cage vertices associated with sparse weights to be inferred automatically by a user's manipulation on constrained vertices or handles in real-time. For this scheme, we have developed two new techniques. The first one is a weight reduction technique to reduce the number of control points on the cage, while still keeping the surface quality. Another technique computes positions of the cage vertices, in order to preserve the rigidity of the shape by minimizing nonlinear rigidity energies. Our prototype system demonstrates that our linear blending scheme can deal with rigid and non-rigid deformation more consistently and efficiently than previous approaches.
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刚性和非刚性变形的线性混合方案
基于广义质心坐标的线性混合技术由于其简单性在数字化生产工作场所中得到了广泛的认可。然而,密集的权重,非刚性变形和缺乏直观的控制界面限制了它的实际使用。在本文中,我们提出了一种新的线性混合方案,利用现有的重心坐标来克服这些困难。该方案允许与稀疏权重相关的笼顶点通过用户对约束顶点或句柄的操作实时自动推断。对于这个方案,我们开发了两种新技术。第一个是减重技术,减少笼上控制点的数量,同时仍保持表面质量。另一种技术计算笼顶点的位置,以便通过最小化非线性刚度能量来保持形状的刚度。我们的原型系统表明,我们的线性混合方案可以比以前的方法更一致和有效地处理刚性和非刚性变形。
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