GPU-accelerated Localization in Confined Spaces using Deep Geometric Features

R. Brogaard, Ole Ravn, Evangelos Boukas
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引用次数: 1

Abstract

Navigating within dark and confined spaces require robotic platforms to utilize accurate and reliable localization systems to operate safely and unattended. This paper presents an absolute localization system, for known confined spaces, using state of the art 3D pointcloud descriptors. Local geometric features are extracted from a known map and registered to matching features visible in the robots field of view. The 3D registrations are motion-filtered and fused with a visual inertial odometry estimate in an Extended Kalman filter, which return a fast and accurate absolute pose estimate. The proposed localization system is tested with different deep learning feature descriptors in a structured confined space, and our results indicate greater accuracy and lower processing time when compared to mainstream 3D registration approaches.
基于深度几何特征的受限空间gpu加速定位
在黑暗和密闭空间中导航需要机器人平台利用准确可靠的定位系统来安全无人值守地运行。本文提出了一种基于三维点云描述符的已知空间绝对定位系统。从已知的地图中提取局部几何特征,并与机器人视野中可见的特征进行匹配。在扩展卡尔曼滤波器中对三维配准进行运动滤波并与视觉惯性里程估计融合,从而返回快速准确的绝对姿态估计。本文提出的定位系统在结构化的受限空间中使用不同的深度学习特征描述符进行了测试,结果表明与主流的3D配准方法相比,我们的定位系统具有更高的精度和更短的处理时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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