International audienceThe paper addresses the problem of scene flow estimation from sparsely sampled video light fields. The scene flow estimation method is based on an affine model in the 4D ray space that allows us to estimate a dense flow from sparse estimates in 4D clusters. A dataset of synthetic video light fields created for assessing scene flow estimation techniques is also described. Experiments show that the proposed method gives error rates on the optical flow components that are comparable to those obtained with state of the art optical flow estimation methods, while computing a more accurate disparity variation when compared with prior scene flow estimation techniques
Highly assisted driving and autonomous vehicles require a detailed and accurate perception of the en...
We propose to incorporate feature correlation and sequential processing into dense optical flow esti...
Greyscale methods have long been the focus of algorithms for recovering optical flow. Yet optical fl...
International audienceThe paper addresses the problem of scene flow estimation from sparsely sampled...
Optical flow can greatly improve the robustness of visual tracking algorithms. While dense optical f...
International audienceWe propose a sparse aggregation framework for optical flow estimation to overc...
Scene flow is the three-dimensional motion field of points in the world, just as optical flow is the...
International audienceWe present a two-stage 3D optical flow estimation method for light microscopy ...
Modern optical flow methods make use of salient scene feature points detected and matched within th...
International audienceThis paper proposes a learning based solution to disparity (depth) estimation ...
International audienceThis paper addresses the problem of depth estimation for every viewpoint of a ...
We propose a new technique for computing dense scene flow from two handheld videos with wide camera ...
This paper introduces a new sparsity prior to the estima-tion of dense flow fields. Based on this ne...
Motion estimation plays a key role in many of the image processing and computer vision problems. Th...
Estimating the displacements of intensity patterns between sequential frames is a very well-studied ...
Highly assisted driving and autonomous vehicles require a detailed and accurate perception of the en...
We propose to incorporate feature correlation and sequential processing into dense optical flow esti...
Greyscale methods have long been the focus of algorithms for recovering optical flow. Yet optical fl...
International audienceThe paper addresses the problem of scene flow estimation from sparsely sampled...
Optical flow can greatly improve the robustness of visual tracking algorithms. While dense optical f...
International audienceWe propose a sparse aggregation framework for optical flow estimation to overc...
Scene flow is the three-dimensional motion field of points in the world, just as optical flow is the...
International audienceWe present a two-stage 3D optical flow estimation method for light microscopy ...
Modern optical flow methods make use of salient scene feature points detected and matched within th...
International audienceThis paper proposes a learning based solution to disparity (depth) estimation ...
International audienceThis paper addresses the problem of depth estimation for every viewpoint of a ...
We propose a new technique for computing dense scene flow from two handheld videos with wide camera ...
This paper introduces a new sparsity prior to the estima-tion of dense flow fields. Based on this ne...
Motion estimation plays a key role in many of the image processing and computer vision problems. Th...
Estimating the displacements of intensity patterns between sequential frames is a very well-studied ...
Highly assisted driving and autonomous vehicles require a detailed and accurate perception of the en...
We propose to incorporate feature correlation and sequential processing into dense optical flow esti...
Greyscale methods have long been the focus of algorithms for recovering optical flow. Yet optical fl...