We propose a general, prior-free approach for the uncalibrated non-rigid structure-from-motion problem for modelling and analysis of non-rigid objects such as human faces. The word general refers to an approach that recovers the non-rigid affine structure and motion from 2D point correspondences by assuming that (1) the non-rigid shapes are generated by a linear combination of rigid 3D basis shapes, (2) that the non-rigid shapes are affine in nature, i.e., they can be modelled as deviations from the mean, rigid shape, (3) and that the basis shapes are statistically independent. In contrast to the majority of existing works, no prior information is assumed for the structure and motion apart from the assumption the that underlying basis shapes are statistically independent. The independent 3D shape bases are recovered by independent subspace analysis (ISA). Likewise, in contrast to the most previous approaches, no calibration information is assumed for affine cameras; the reconstruction is solved up to a global affine ambiguity that makes our approach simple but efficient. In the experiments, we evaluated the method with several standard data sets including a real face expression data set of 7200 faces with 2D point correspondences and unknown 3D structure and motion for which we obtained promising results.
翻译:我们为模拟和分析人类脸部等非硬性物体的模型和分析,建议对未经校正的、非硬性的结构-自动结构问题采取一般的、不前设的方法。 普通词是指一种恢复非硬性纤维结构和从2D点对应体运动的方法,假设:(1) 非硬性3D基形状的线性组合产生非硬性形状,(2) 非硬性3D基形状是非硬性组合产生的,(2) 非硬性形状在性质上是近似性的,即,它们可以模拟为偏离平均值、硬性形状(3),基础形状在统计上是独立的。与大多数现有工作相比,没有事先为结构和运动假定基础形状在统计上是独立的假设而事先假定任何信息。 独立的3D形状基础是独立的子空间分析(ISA)所恢复的。 类似地说,与以前的方法不同,非硬性结构是非硬性结构,即非硬性结构可以模拟成一种全球性的模棱两面的模形模糊性图象。在实验中,我们用若干个标准对正态数据进行了评估的方法,其中含有真实的2D格式的图象。