论文标题
非刚性结构中的封闭形式的不确定性传播
A Closed-Form Uncertainty Propagation in Non-Rigid Structure from Motion
论文作者
论文摘要
具有低级先验的半明确编程(SDP)已广泛应用于运动(NRSFM)的非刚性结构。基于低级别的约束,它避免了常规的基形或基本对象方法中基数选择的固有歧义。尽管可变形形状重建效率,但仍不清楚如何评估从SDP过程中恢复的形状的不确定性。在本文中,我们对确切的低级别SDP问题的估计变形3D形状点的元素不确定性定量进行了统计推断。提出并测试了一种封闭形式的不确定性定量方法。此外,我们使用数值最佳等级选择方法将确切的低级别不确定性量化扩展到近似低级方案,该方法可以在基于SDP的NRSFM方案中求解实际应用。提出的方法为SDP方法提供了独立的模块,仅需要输入2D跟踪点的统计信息。广泛的实验证明,输出3D点与2D轨道,提出的方法具有相同的正态分布,并准确地量化了不确定性,并支持它对常规的基于SDP低级别的NRSFM求解器具有可取的影响。
Semi-Definite Programming (SDP) with low-rank prior has been widely applied in Non-Rigid Structure from Motion (NRSfM). Based on a low-rank constraint, it avoids the inherent ambiguity of basis number selection in conventional base-shape or base-trajectory methods. Despite the efficiency in deformable shape reconstruction, it remains unclear how to assess the uncertainty of the recovered shape from the SDP process. In this paper, we present a statistical inference on the element-wise uncertainty quantification of the estimated deforming 3D shape points in the case of the exact low-rank SDP problem. A closed-form uncertainty quantification method is proposed and tested. Moreover, we extend the exact low-rank uncertainty quantification to the approximate low-rank scenario with a numerical optimal rank selection method, which enables solving practical application in SDP based NRSfM scenario. The proposed method provides an independent module to the SDP method and only requires the statistic information of the input 2D tracked points. Extensive experiments prove that the output 3D points have identical normal distribution to the 2D trackings, the proposed method and quantify the uncertainty accurately, and supports that it has desirable effects on routinely SDP low-rank based NRSfM solver.