Robust Variational Optical Flow Algorithm Based on Rolling Guided Filtering

Junjie Wu, Xuebing Wang, Zhen Chen, Congxuan Zhang
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引用次数: 2

Abstract

In order to solve the excessive smoothness caused by existing optical flow algorithms within motion edge regions of images under difficult scenes, such as noise, illumination changes and shadows, occlusion, large displacement, and non-rigid motion, a robust variational optical flow estimation model based on the rolling guidance filter has been proposed in this paper. Firstly, the rolling guidance filter strategy is presented, and the energy function of the rolling guidance filter is designed. Secondly, a non-local total variation with L1 norm (TV-Ll) optical flow computational model based on the rolling guidance filter is constructed. Finally, the energy function is converted into a linear minimization of the TV-Ll optical flow through the multi-resolution pyramid refinement, and the flow field is computed at each layer. The rolling guidance filter is used to optimize the optical flow estimation alternately. The MPI-Sintel and KITTI test sequences are employed to evaluate the proposed algorithm and other state-of-the-art methods, including total variation regularization of local-global optical flow (CLG- TV), classic model with non-local constraint (Classic+ NL), and nearest neighbor fields (NNF). The experimental results showed that the proposed algorithm, compared with other contrast methods, has a better edge protection effect in difficult scenes and motion forms, which effectively improves the accuracy and robustness of the optical flow estimation.
基于滚动引导滤波的鲁棒变分光流算法
针对现有光流算法在噪声、光照变化与阴影、遮挡、大位移、非刚体运动等困难场景下图像运动边缘区域过于平滑的问题,提出了一种基于滚动制导滤波器的鲁棒变分光流估计模型。首先,提出了滚动制导滤波策略,设计了滚动制导滤波器的能量函数。其次,建立了基于滚动制导滤波器的非局部全变分L1范数(TV-Ll)光流计算模型;最后,通过多分辨率金字塔细化将能量函数转化为TV-Ll光流的线性最小值,并在每一层计算流场。采用滚动制导滤波器交替优化光流估计。利用mpi - sinintel和KITTI测试序列对该算法以及局部-全局光流全变分正则化(CLG- TV)、经典非局部约束模型(classic + NL)和最近邻场(NNF)等最新方法进行了评价。实验结果表明,与其他对比方法相比,该算法在困难场景和运动形式下具有更好的边缘保护效果,有效提高了光流估计的准确性和鲁棒性。
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