多级解耦视觉SLAM系统研究

Mohamed H. Merzban, M. Abdellatif, Hossam S. Abbas, S. Sessa
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引用次数: 2

摘要

SLAM被定义为同时估计移动机器人的姿态和周围环境的结构。目前,人们对视觉SLAM很感兴趣,以相机为主要传感器的SLAM,因为相机是一种无处不在且价格合理的传感器。由透视投影形成的摄像机测量值在估计状态方面是高度非线性的,导致了复杂的非线性估计问题。本文提出了一种新的运动估计系统,将运动估计问题分为局部运动估计和全局运动估计两部分。这种划分导致了一个简单的线性估计系统。首先在机器人局部框架中估计局部运动参数(加速度、速度、角加速度和方向);然后在第二阶段在全局帧中估计机器人位置和场景地图作为全局运动参数。在每个相机帧更新地图,并以相对方式表示,以解耦机器人姿态和地图结构估计。新系统将地图校正简化为线性优化问题。仿真结果表明,该系统具有较好的收敛性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward multi-stage decoupled visual SLAM system
SLAM is defined as simultaneous estimation of mobile robot pose and structure of the surrounding environment Currently, there is a much interest in Visual SLAM, SLAM with a camera as main sensor, because the camera is an ubiquitous and affordable sensor. Camera measurements formed by perspective projection is highly nonlinear with respect to estimated states, leading to complicated nonlinear estimation problem. In this paper, a novel system is proposed that divides the problem into two parts: local and global motion estimation. This division leads to a simple linear estimation system. In the first stage, local motion parameters (acceleration, velocity, angular acceleration and orientation) are estimated in robot local frame. Robot position and the scene map are then estimated in the second stage in global frame as global motion parameters. Map is updated at each camera frame and is represented in a relative way to decouple robot pose from map structure estimation. The new system simplified the map correction to a linear optimization problem. Simulation results showed that the proposed system converges and yields accurate results.
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