首页> 外文会议>IEEE International Conference on Computer Vision;ICCV 2009 >Bayesian selection of scaling laws for motion modeling in images
【24h】

Bayesian selection of scaling laws for motion modeling in images

机译:用于图像运动建模的缩放定律的贝叶斯选择

获取原文

摘要

Based on scaling laws describing the statistical structure of turbulent motion across scales, we propose a multiscale and non-parametric regularizer for optic-flow estimation. Regularization is achieved by constraining motion increments to behave through scales as the most likely self-similar process given some image data. In a first level of inference, the hard constrained minimization problem is optimally solved by taking advantage of lagrangian duality. It results in a collection of first-order regularizers acting at different scales. This estimation is non-parametric since the optimal regularization parameters at the different scales are obtained by solving the dual problem. In a second level of inference, the most likely self-similar model given the data is optimally selected by maximization of Bayesian evidence. The motion estimator accuracy is first evaluated on a synthetic image sequence of simulated bi-dimensional turbulence and then on a real meteorological image sequence. Results obtained with the proposed physical based approach exceeds the best state of the art results. Furthermore, selecting from images the most evident multiscale motion model enables the recovery of physical quantities, which are of major interest for turbulence characterization.
机译:基于描述尺度间湍流运动统计结构的尺度定律,我们提出了一种用于光流估计的多尺度和非参数正则器。通过限制运动增量使其在一定的图像数据范围内成为最可能的自相似过程,从而通过比例缩放来实现正则化。在第一级推论中,利用拉格朗日对偶性来最优地解决硬约束最小化问题。它导致以不同的比例起作用的一阶正则化器的集合。这种估计是非参数的,因为通过解决对偶问题可以获得不同尺度的最优正则化参数。在第二层次的推论中,给定数据的最可能自相似模型是通过贝叶斯证据的最大化来最佳选择的。首先在模拟的二维湍流的合成图像序列上评估运动估计器的准确性,然后在真实的气象图像序列上评估运动估计器的准确性。用所提出的基于物理的方法获得的结果超过了现有技术的最佳状态。此外,从图像中选择最明显的多尺度运动模型可以恢复物理量,这是湍流表征的主要关注点。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号