Cremers Daniel
Department of Computer Science, University of Bonn, Roemerstrasse 164, D-53117 Bonn, Germany.
IEEE Trans Pattern Anal Mach Intell. 2006 Aug;28(8):1262-73. doi: 10.1109/TPAMI.2006.161.
In recent years, researchers have proposed introducing statistical shape knowledge into level set-based segmentation methods in order to cope with insufficient low-level information. While these priors were shown to drastically improve the segmentation of familiar objects, so far the focus has been on statistical shape priors which are static in time. Yet, in the context of tracking deformable objects, it is clear that certain silhouettes (such as those of a walking person) may become more or less likely over time. In this paper, we tackle the challenge of learning dynamical statistical models for implicitly represented shapes. We show how these can be integrated as dynamical shape priors in a Bayesian framework for level set-based image sequence segmentation. We assess the effect of such shape priors "with memory" on the tracking of familiar deformable objects in the presence of noise and occlusion. We show comparisons between dynamical and static shape priors, between models of pure deformation and joint models of deformation and transformation, and we quantitatively evaluate the segmentation accuracy as a function of the noise level and of the camera frame rate. Our experiments demonstrate that level set-based segmentation and tracking can be strongly improved by exploiting the temporal correlations among consecutive silhouettes which characterize deforming shapes.
近年来,研究人员提出将统计形状知识引入基于水平集的分割方法中,以应对低级信息不足的问题。虽然这些先验知识已被证明能显著改善对熟悉物体的分割,但迄今为止,重点一直放在随时间静态的统计形状先验知识上。然而,在跟踪可变形物体的背景下,很明显某些轮廓(比如行走之人的轮廓)可能会随时间变得或多或少更有可能出现。在本文中,我们应对为隐式表示的形状学习动态统计模型这一挑战。我们展示了如何将这些模型作为动态形状先验知识集成到基于水平集的图像序列分割的贝叶斯框架中。我们评估这种“有记忆”的形状先验知识在存在噪声和遮挡的情况下对熟悉的可变形物体跟踪的影响。我们展示了动态形状先验知识与静态形状先验知识之间、纯变形模型与变形和变换联合模型之间的比较,并且我们定量评估了作为噪声水平和相机帧率函数的分割精度。我们的实验表明,通过利用表征变形形状的连续轮廓之间的时间相关性,基于水平集的分割和跟踪可以得到显著改善。