Zhu Jianke, Lyu Michael R, Huang Thomas S
Department of Computer Science and Engineering, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong.
IEEE Trans Pattern Anal Mach Intell. 2009 Jul;31(7):1210-24. doi: 10.1109/TPAMI.2008.151.
In this paper, we present a fusion approach to solve the nonrigid shape recovery problem, which takes advantage of both the appearance information and the local features. We have two major contributions. First, we propose a novel progressive finite Newton optimization scheme for the feature-based nonrigid surface detection problem, which is reduced to only solving a set of linear equations. The key is to formulate the nonrigid surface detection as an unconstrained quadratic optimization problem that has a closed-form solution for a given set of observations. Second, we propose a deformable Lucas-Kanade algorithm that triangulates the template image into small patches and constrains the deformation through the second-order derivatives of the mesh vertices. We formulate it into a sparse regularized least squares problem, which is able to reduce the computational cost and the memory requirement. The inverse compositional algorithm is applied to efficiently solve the optimization problem. We have conducted extensive experiments for performance evaluation on various environments, whose promising results show that the proposed algorithm is both efficient and effective.
在本文中,我们提出了一种融合方法来解决非刚性形状恢复问题,该方法利用了外观信息和局部特征。我们有两个主要贡献。首先,我们针对基于特征的非刚性表面检测问题提出了一种新颖的渐进有限牛顿优化方案,该方案简化为仅求解一组线性方程。关键在于将非刚性表面检测公式化为一个无约束二次优化问题,对于给定的一组观测值,该问题具有封闭形式的解。其次,我们提出了一种可变形的Lucas-Kanade算法,该算法将模板图像三角剖分为小补丁,并通过网格顶点的二阶导数来约束变形。我们将其公式化为一个稀疏正则化最小二乘问题,这能够降低计算成本和内存需求。应用逆合成算法来有效求解优化问题。我们在各种环境下进行了广泛的性能评估实验,其令人满意的结果表明所提出的算法既高效又有效。