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An Improved Algorithm for TY-L~1 Optical Flow

机译:TY-L〜1光流的一种改进算法

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摘要

A look at the Middlebury optical flow benchmark [5] reveals that nowadays variational methods yield the most accurate optical flow fields between two image frames. In this work we propose an improvement variant of the original duality based TV-L~1 optical flow algorithm in [31] and provide implementation details. This formulation can preserve discontinuities in the flow field by employing total variation (TV) regularization. Furthermore, it offers robustness against outliers by applying the robust L~1 norm in the data fidelity term.rnOur contributions are as follows. First, we propose to perform a structure-texture decomposition of the input images to get rid of violations in the optical flow constraint due to illumination changes. Second, we propose to integrate a median filter into the numerical scheme to further increase the robustness to sampling artefacts in the image data. We experimentally show that very precise and robust estimation of optical flow can be achieved with a variational approach in real-time. The numerical scheme and the implementation are described in a detailed way, which enables reimplementation of this high-end method.
机译:看一下Middlebury光流基准[5],发现当今的变分方法在两个图像帧之间产生了最精确的光流场。在这项工作中,我们在[31]中提出了基于原始对偶性的TV-L〜1光流算法的改进变体,并提供了实现细节。通过采用总变化(TV)正则化,此公式可以保留流场中的不连续性。此外,它通过在数据保真度方面应用鲁棒的L〜1范数来提供针对异常值的鲁棒性。我们的贡献如下。首先,我们建议对输入图像执行结构纹理分解,以消除由于光照变化而引起的光流约束中的违规情况。其次,我们建议将中值滤波器集成到数值方案中,以进一步提高对图像数据中的伪像进行采样的鲁棒性。我们通过实验表明,使用变分方法可以实时实现非常精确和鲁棒的光流估计。将详细描述数值方案和实现方式,从而可以重新实现此高端方法。

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