首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.4; 20060507-13; Graz(AT) >A General Framework for Motion Segmentation: Independent, Articulated, Rigid, Non-rigid, Degenerate and Non-degenerate
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A General Framework for Motion Segmentation: Independent, Articulated, Rigid, Non-rigid, Degenerate and Non-degenerate

机译:运动分割的通用框架:独立,清晰,刚性,非刚性,退化和非退化

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摘要

We cast the problem of motion segmentation of feature trajectories as linear manifold finding problems and propose a general framework for motion segmentation under affine projections which utilizes two properties of trajectory data: geometric constraint and locality. The geometric constraint states that the trajectories of the same motion lie in a low dimensional linear manifold and different motions result in different linear manifolds; locality, by which we mean in a transformed space a data and its neighbors tend to lie in the same linear manifold, provides a cue for efficient estimation of these manifolds. Our algorithm estimates a number of linear manifolds, whose dimensions are unknown beforehand, and segment the trajectories accordingly. It first transforms and normalizes the trajectories; secondly, for each trajectory it estimates a local linear manifold through local sampling; then it derives the affinity matrix based on principal subspace angles between these estimated linear manifolds; at last, spectral clustering is applied to the matrix and gives the segmentation result. Our algorithm is general without restriction on the number of linear manifolds and without prior knowledge of the dimensions of the linear manifolds. We demonstrate in our experiments that it can segment a wide range of motions including independent, articulated, rigid, non-rigid, degenerate, non-degenerate or any combination of them. In some highly challenging cases where other state-of-the-art motion segmentation algorithms may fail, our algorithm gives expected results.
机译:我们将特征轨迹的运动分割问题归结为线性流形发现问题,并提出仿射投影下的运动分割通用框架,该框架利用了轨迹数据的两个属性:几何约束和局部性。几何约束表明,相同运动的轨迹位于低维线性流形中,不同运动导致不同的线性流形。局部性(我们在转换后的空间中指的是数据及其邻居往往位于同一线性流形中)为有效估计这些流形提供了线索。我们的算法估计了一些线性流形,这些流形的尺寸事先未知,并相应地分割了轨迹。它首先对轨迹进行变换和归一化;其次,对于每个轨迹,通过局部采样估计局部线性流形。然后,基于这些估计的线性流形之间的主子空间角度,得出亲和矩阵;最后,将光谱聚类应用于矩阵并给出分割结果。我们的算法是通用的,没有限制线性歧管的数量,也没有事先了解线性歧管的尺寸。我们在实验中证明,它可以分割各种运动,包括独立的,铰接的,刚性的,非刚性的,简并的,简并的或它们的任意组合。在某些极富挑战性的情况下,其他最新的运动分割算法可能会失败,我们的算法会给出预期的结果。

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