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Dense multi-planar scene estimation from a sparse set of images

Alberto Argiles, Javier Civera, Luis Montesano

Year
2011
Citations
7

Abstract

Ego-motion estimation and 3D scene reconstruction from image data has been a long term aim both in the Robotics and Computer Vision communities. Nevertheless, while both visual SLAM and Structure from Motion already provide an accurate ego-motion estimation, visual scene estimation does not offer yet such a satisfactory result; being in most cases limited to a sparse set of salient points. In this paper we propose an algorithm to densify a sparse point-based reconstruction into a dense multi-plane based one, from the only input of a set of sparse images.

Keywords

Artificial intelligenceComputer visionComputer scienceSalientMotion estimationSet (abstract data type)Structure from motionPoint (geometry)PoseData set

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