Title :
DeepFlow: Large Displacement Optical Flow with Deep Matching
Author :
Weinzaepfel, Philippe ; Revaud, Jerome ; Harchaoui, Zaid ; Schmid, Cordelia
Author_Institution :
INRIA, UJK, Grenoble, France
Abstract :
Optical flow computation is a key component in many computer vision systems designed for tasks such as action detection or activity recognition. However, despite several major advances over the last decade, handling large displacement in optical flow remains an open problem. Inspired by the large displacement optical flow of Brox and Malik, our approach, termed Deep Flow, blends a matching algorithm with a variational approach for optical flow. We propose a descriptor matching algorithm, tailored to the optical flow problem, that allows to boost performance on fast motions. The matching algorithm builds upon a multi-stage architecture with 6 layers, interleaving convolutions and max-pooling, a construction akin to deep convolutional nets. Using dense sampling, it allows to efficiently retrieve quasi-dense correspondences, and enjoys a built-in smoothing effect on descriptors matches, a valuable asset for integration into an energy minimization framework for optical flow estimation. Deep Flow efficiently handles large displacements occurring in realistic videos, and shows competitive performance on optical flow benchmarks. Furthermore, it sets a new state-of-the-art on the MPI-Sintel dataset.
Keywords :
computer vision; convolution; image matching; image motion analysis; image retrieval; image sampling; image sequences; minimisation; smoothing methods; variational techniques; DeepFlow algorithm; MPI-Sintel dataset; computer vision systems; deep convolutional nets; deep matching; dense sampling; descriptor matching algorithm; energy minimization framework; interleaving convolutions; large displacement handling; large displacement optical flow; max-pooling; multistage architecture; optical flow computation; optical flow estimation; quasidense correspondence retrieval; smoothing effect; variational approach; Adaptive optics; Equations; Estimation; Integrated optics; Nonlinear optics; Optical filters; Optical imaging; deep convolutional networks; dense matching; large displacements; non-rigid matching; optical flow;
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
DOI :
10.1109/ICCV.2013.175