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Learning-based camera pose estimation from images of an environment

机译:基于学习的摄像机从环境图像上姿态估计

摘要

A deep neural network (DNN) system learns a map representation for estimating a camera position and orientation (pose). The DNN is trained to learn a map representation corresponding to the environment, defining positions and attributes of structures, trees, walls, vehicles, etc. The DNN system learns a map representation that is versatile and performs well for many different environments (indoor, outdoor, natural, synthetic, etc.). The DNN system receives images of an environment captured by a camera (observations) and outputs an estimated camera pose within the environment. The estimated camera pose is used to perform camera localization, i.e., recover the three-dimensional (3D) position and orientation of a moving camera, which is a fundamental task in computer vision with a wide variety of applications in robot navigation, car localization for autonomous driving, device localization for mobile navigation, and augmented/virtual reality.
机译:深度神经网络(DNN)系统学习用于估计相机位置和方向(姿势)的地图表示。培训DNN以学习与环境相对应的地图表示,定义结构,树木,墙壁,车辆等的位置和属性。DNN系统学习多功能的地图表示,并且对于许多不同的环境(室内,室内,室内,室内,室内,室外) ,自然,合成等)。 DNN系统接收由相机(观察)捕获的环境的图像,并在环境中输出估计的相机姿势。估计的相机姿势用于执行相机定位,即恢复移动摄像机的三维(3D)位置和方向,这是计算机视觉中的基本任务,具有各种应用程序在机器人导航,汽车本地化自动驾驶,移动导航的设备本地化,以及增强/虚拟现实。

著录项

  • 公开/公告号US10964061B2

    专利类型

  • 公开/公告日2021-03-30

    原文格式PDF

  • 申请/专利权人 NVIDIA CORPORATION;

    申请/专利号US202016872752

  • 申请日2020-05-12

  • 分类号G06T7/80;G06T7;G06K9;G06K9/20;G06K9/46;G06N3;G06T7/579;G06T7/20;

  • 国家 US

  • 入库时间 2024-06-14 21:23:28

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