International audienceWe propose a sparse aggregation framework for optical flow estimation to overcome the limitations of variational methods introduced by coarse-to-fine strategies. The idea is to compute parametric motion candidates estimated in overlapping square windows of variable size taken in the semi-local neighborhood of a given point. In the second step, a sparse representation and an optimization procedure in the continuous setting are proposed to compute a motion vector close to motion candidates for each pixel. We demonstrate the feasibility and performance of our two-step approach on image pairs and compare its performances with competitive methods on the Middlebury benchmark
© 2015 IEEE. Despite recent advances, the extraction of optical flow with large displacements is sti...
This paper introduces a new sparsity prior to the estima-tion of dense flow fields. Based on this ne...
The study of motion estimation reaches back decades and has become one of the central topics of rese...
International audienceWe propose a sparse aggregation framework for optical flow estimation to overc...
International audienceWe propose a variational aggregation method for optical flow estimation. It co...
International audienceHandling all together large displacements, motion details and occlusions remai...
International audienceGlobal variational methods for optical flow estimation usually suffer from an ...
This thesis is concerned with dense motion estimation in image sequences, also known as optical flow...
International audienceWe propose a novel approach for optical flow estimation , targeted at large di...
International audienceThe paper addresses the problem of scene flow estimation from sparsely sampled...
Handling all together large displacements, motion details and occlusions remains an open issue for r...
Optical flow can greatly improve the robustness of visual tracking algorithms. While dense optical f...
Motion is an intrinsic character of the world and an inherent part of our visual experience, which g...
In this paper we address the intricate issue of recovering and segmenting the apparent velocity fiel...
Despite recent advances, the extraction of optical flow with large displacements is still challengin...
© 2015 IEEE. Despite recent advances, the extraction of optical flow with large displacements is sti...
This paper introduces a new sparsity prior to the estima-tion of dense flow fields. Based on this ne...
The study of motion estimation reaches back decades and has become one of the central topics of rese...
International audienceWe propose a sparse aggregation framework for optical flow estimation to overc...
International audienceWe propose a variational aggregation method for optical flow estimation. It co...
International audienceHandling all together large displacements, motion details and occlusions remai...
International audienceGlobal variational methods for optical flow estimation usually suffer from an ...
This thesis is concerned with dense motion estimation in image sequences, also known as optical flow...
International audienceWe propose a novel approach for optical flow estimation , targeted at large di...
International audienceThe paper addresses the problem of scene flow estimation from sparsely sampled...
Handling all together large displacements, motion details and occlusions remains an open issue for r...
Optical flow can greatly improve the robustness of visual tracking algorithms. While dense optical f...
Motion is an intrinsic character of the world and an inherent part of our visual experience, which g...
In this paper we address the intricate issue of recovering and segmenting the apparent velocity fiel...
Despite recent advances, the extraction of optical flow with large displacements is still challengin...
© 2015 IEEE. Despite recent advances, the extraction of optical flow with large displacements is sti...
This paper introduces a new sparsity prior to the estima-tion of dense flow fields. Based on this ne...
The study of motion estimation reaches back decades and has become one of the central topics of rese...