首页 /研究 /Semantic Scene Models for Visual Localization under Large Viewpoint Changes
PERCEPTION

Semantic Scene Models for Visual Localization under Large Viewpoint Changes

Jimmy Li, Zhaoqi Xu, David Meger, Gregory Dudek

发表年份
2018
引用次数
8

摘要

We propose an approach for camera pose estimation under large viewpoint changes using only 2D RGB images. This enables a mobile robot to relocalize itself with respect to a previously-visited scene when seeing it again from a completely new vantage point. In order to overcome large appearance changes, we integrate a variety of cues, including object detections, vanishing points, structure from motion, and object-to-object context in order to constrain the camera geometry, while simultaneously estimating the 3D pose of covisible objects represented as bounding cuboids. We propose an efficient sampling-based approach that quickly cuts down the high-dimensional search space, and a robust correspondence algorithm that matches covisible objects via inter-object spatial relationships. We validate our approach using the publicly available Sun3D dataset, in which we demonstrate the ability to handle camera translations of up to 5.9 meters and camera rotations of up to 110 degrees.

关键词

Computer visionArtificial intelligenceComputer scienceMinimum bounding boxObject (grammar)PoseRGB color modelBounding overwatchContext (archaeology)Object detection

相关论文

查看 PERCEPTION 分类全部论文