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Reliable estimation of dense optical flow fields with large displacements

机译:大位移密集光流场的可靠估计

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In this paper we show that a classic optical flow technique by Nagel and Enkelmann (1986, IEEE Trans. Pattern Anal. Mach. Intell., Vol. 8, pp. 565-593) can be regarded as an early anisotropic diffusion method with a diffusion tensor. We introduce three improvements into the model formulation that (i) avoid inconsistencies caused by centering the brightness term and the smoothness term in different images, (ii) use a linear scale-space focusing strategy from coarse to fine scales for avoiding convergence to physically irrelevant local minima, and (iii) create an energy functional that is invariant under linear brightness changes. Applying a gradient descent method to the resulting energy functional leads to a system of diffusion-reaction equations. We prove that this system has a unique solution under realistic assumptions on the initial data, and we present an efficient linear implicit numerical scheme in detail. Our method creates flow fields with 100% density over the entire image domain, it is robust under a large range of parameter variations, and it can recover displacement fields that are far beyond the typical one-pixel limits which are characteristic for many differential methods for determining optical flow. We show that it performs better than the optical flow methods with 100% density that are evaluated by Barron et al. (1994, Int. J. Comput. Vision, Vol. 12, pp. 43-47). Our software is available from the Internet. [References: 60]
机译:在本文中,我们证明了Nagel和Enkelmann的经典光流技术(1986,IEEE Trans。Pattern Anal。Mach。Intell。,第8卷,第565-593页)可以看作是一种早期的各向异性扩散方法。扩散张量。我们在模型公式中引入了三项改进:(i)避免了将亮度项和平滑度项放在不同图像中居中引起的不一致;(ii)使用从粗到细的线性比例空间聚焦策略,以避免收敛到与物理无关局部极小值;(iii)创建在线性亮度变化下不变的能量函数。将梯度下降方法应用于所得的能量泛函导致了扩散反应方程组。我们证明了该系统在对初始数据的实际假设下具有唯一的解决方案,并且详细介绍了一种有效的线性隐式数值方案。我们的方法创建的流场在整个图像域中具有100%的密度,在很大的参数变化范围内都非常可靠,并且可以恢复远远超出典型的一像素限制的位移场,这是许多差分方法所特有的。确定光流。我们显示,它的性能比Barron等人评估的100%密度的光流方法更好。 (1994,国际J.计算视觉,第12卷,第43-47页)。我们的软件可从Internet获得。 [参考:60]

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