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Full Description
Localization and mapping play a critical role in the autonomous task execution of mobile robots. This book covers the theoretical and technological aspects of robot localization and mapping, including visual localization and mapping, visual relocalization, LiDAR localization and mapping, and place recognition.
It provides the theoretical foundations of robot localization and mapping. It employs both traditional methods, such as geometry-based visual localization, and state-of-the-art deep learning techniques that improve robot perception. The authors also address LiDAR-based localization, exploring techniques to improve both efficiency and accuracy when processing dense point clouds. Key topics include visual localization using deep features, integration of visual solutions under ROS-based software architecture, and distribution-based LiDAR localization, etc.
This book will be of great interest to students and professionals in the field of robotics or artificial intelligence. It will also be an excellent reference for engineers or technicians involved in the development of robot localization.
Contents
1 Introduction 2 Mathematical Foundation of Localization and Mapping Theory 3 Real-time Semantic Visual SLAM with Points and Objects 4 Visual Relocalization from the Perspective of Scene Coordinate Regression Network 5 Visual Relocalization from the Perspective of Place Recognition 6 Robot Visual Localization Framework Based on Offline Hybrid Map 7 Hierarchical LiDAR Odometry via Maximum Likelihood Estimation with Tightly Associated Distributions 8 Hierarchical Distribution-based Tightly-Coupled LiDAR Inertial Odometry 9 LiDAR Place Recognition Based on Range Image and Column-Shift-Invariant Attention 10 Summary and Outlook