Lagrangian motion magnification with double sparse optical flow decomposition

IF 1.3 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Philipp Flotho, Cosmas Heiss, Gabriele Steidl, Daniel J. Strauss
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Abstract

Microexpressions are fast and spatially small facial expressions that are difficult to detect. Therefore, motion magnification techniques, which aim at amplifying and hence revealing subtle motion in videos, appear useful for handling such expressions. There are basically two main approaches, namely, via Eulerian or Lagrangian techniques. While the first one magnifies motion implicitly by operating directly on image pixels, the Lagrangian approach uses optical flow (OF) techniques to extract and magnify pixel trajectories. In this study, we propose a novel approach for local Lagrangian motion magnification of facial micro-motions. Our contribution is 3-fold: first, we fine tune the recurrent all-pairs field transforms (RAFT) for OFs deep learning approach for faces by adding ground truth obtained from the variational dense inverse search (DIS) for the OF algorithm applied to the CASME II video set of facial micro expressions. This enables us to produce OFs of facial videos in an efficient and sufficiently accurate way. Second, since facial micro-motions are both local in space and time, we propose to approximate the OF field by sparse components both in space and time leading to a double sparse decomposition. Third, we use this decomposition to magnify micro-motions in specific areas of the face, where we introduce a new forward warping strategy using a triangular splitting of the image grid and barycentric interpolation of the RGB vectors at the corners of the transformed triangles. We demonstrate the feasibility of our approach by various examples.
双稀疏光流分解的拉格朗日运动放大
微表情是一种快速且空间小的面部表情,很难被发现。因此,旨在放大并显示视频中细微动作的运动放大技术似乎对处理这种表情很有用。基本上有两种主要的方法,即通过欧拉或拉格朗日技术。第一种方法通过直接操作图像像素来隐式放大运动,而拉格朗日方法使用光流(OF)技术来提取和放大像素轨迹。在这项研究中,我们提出了一种新的面部微运动局部拉格朗日运动放大方法。我们的贡献有三个方面:首先,我们通过为应用于CASME II面部微表情视频集的OF算法添加从变分密集逆搜索(DIS)中获得的地面真值,对用于人脸的OFs深度学习方法的循环全对场变换(RAFT)进行微调。这使得我们能够高效且足够准确地制作面部视频的OFs。其次,由于面部微运动在空间和时间上都是局部的,我们提出通过空间和时间上的稀疏分量来近似OF场,从而实现双稀疏分解。第三,我们使用这种分解来放大面部特定区域的微运动,其中我们引入了一种新的前向扭曲策略,使用图像网格的三角形分裂和变换三角形角的RGB矢量的质心插值。我们用不同的例子来证明我们方法的可行性。
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来源期刊
Frontiers in Applied Mathematics and Statistics
Frontiers in Applied Mathematics and Statistics Mathematics-Statistics and Probability
CiteScore
1.90
自引率
7.10%
发文量
117
审稿时长
14 weeks
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