Department of Computing Science, University of Alberta, Edmonton, AB T6G2E8, Canada.
IEEE Trans Image Process. 2011 Oct;20(10):2925-36. doi: 10.1109/TIP.2011.2142005. Epub 2011 Apr 11.
Fluid motion estimation from time-sequenced images is a significant image analysis task. Its application is widespread in experimental fluidics research and many related areas like biomedical engineering and atmospheric sciences. In this paper, we present a novel flow computation framework to estimate the flow velocity vectors from two consecutive image frames. In an energy minimization-based flow computation, we propose a novel data fidelity term, which: 1) can accommodate various measures, such as cross-correlation or sum of absolute or squared differences of pixel intensities between image patches; 2) has a global mechanism to control the adverse effect of outliers arising out of motion discontinuities, proximity of image borders; and 3) can go hand-in-hand with various spatial smoothness terms. Further, the proposed data term and related regularization schemes are both applicable to dense and sparse flow vector estimations. We validate these claims by numerical experiments on benchmark flow data sets.
从时序列图像估计流场是一项重要的图像分析任务。它的应用非常广泛,包括实验流体力学研究以及许多相关领域,如生物医学工程和大气科学。在本文中,我们提出了一种新的流场计算框架,用于从连续的两帧图像中估计流速向量。在基于能量最小化的流场计算中,我们提出了一种新的数据保真项,它:1)可以适应各种度量方法,如互相关或图像补丁之间的像素强度的绝对值或平方差之和;2)具有全局机制来控制由于运动不连续性、图像边界接近而产生的异常值的不利影响;3)可以与各种空间平滑项相结合。此外,所提出的数据项和相关正则化方案都适用于密集和稀疏的流速向量估计。我们通过基准流数据集上的数值实验验证了这些主张。