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Mapping and Localization in Urban Environments Using Cameras

Mapping and Localization in Urban Environments Using Cameras
Author: Henning Lategahn
Publisher: KIT Scientific Publishing
Total Pages: 146
Release: 2014
Genre: Computers
ISBN: 373150135X

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In this work we present a system to fully automatically create a highly accurate visual feature map from image data acquired from within a moving vehicle. Moreover, a system for high precision self localization is presented. Furthermore, we present a method to automatically learn a visual descriptor. The map relative self localization is centimeter accurate and allows autonomous driving.


Mapping and Localization in Urban Environments Using Cameras

Mapping and Localization in Urban Environments Using Cameras
Author: Henning Lategahn
Publisher:
Total Pages: 136
Release: 2020-10-09
Genre: Technology & Engineering
ISBN: 9781013282256

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In this work we present a system to fully automatically create a highly accurate visual feature map from image data aquired from within a moving vehicle. Moreover, a system for high precision self localization is presented. Furthermore, we present a method to automatically learn a visual descriptor. The map relative self localization is centimeter accurate and allows autonomous driving. This work was published by Saint Philip Street Press pursuant to a Creative Commons license permitting commercial use. All rights not granted by the work's license are retained by the author or authors.


Image-based Localization in Urban Environments

Image-based Localization in Urban Environments
Author:
Publisher:
Total Pages: 28
Release: 2010
Genre:
ISBN:

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This report describes an efficient algorithm to accurately determine the position and orientation of a camera in an outdoor urban environment using camera imagery acquired from a single location on the ground. The requirement to operate using imagery from a single location allows a system using our algorithms to generate instant position estimates and ensures that the approach may be applied to both mobile and immobile ground sensors. Localization is accomplished by registering visible ground images to urban terrain models that are easily generated offline from aerial imagery. Provided there are a sufficient number of buildings in view of the sensor, our approach provides accurate position and orientation estimates, with position estimates that are more accurate than those typically produced by a global positioning system (GPS).


Real-time Dense Simultaneous Localization and Mapping Using Monocular Cameras

Real-time Dense Simultaneous Localization and Mapping Using Monocular Cameras
Author: William Nicholas Greene
Publisher:
Total Pages: 100
Release: 2016
Genre:
ISBN:

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Cameras are powerful sensors for robotic navigation as they provide high-resolution environment information (color, shape, texture, etc.), while being lightweight, low-power, and inexpensive. Exploiting such sensor data for navigation tasks typically falls into the realm of monocular simultaneous localization and mapping (SLAM), where both the robot's pose and a map of the environment are estimated concurrently from the imagery produced by a single camera mounted on the robot. This thesis presents a monocular SLAM solution capable of reconstructing dense 3D geometry online without the aid of a graphics processing unit (GPU). The key contribution is a multi-resolution depth estimation and spatial smoothing process that exploits the correlation between low-texture image regions and simple planar structure to adaptively scale the complexity of the generated keyframe depthmaps to the quality of the input imagery. High-texture image regions are represented at higher resolutions to capture fine detail, while low-texture regions are represented at coarser resolutions for smooth surfaces. This approach allows for significant computational savings while simultaneously increasing reconstruction density and quality when compared to the state-of-the-art. Preliminary qualitative results are also presented for an adaptive meshing technique that generates dense reconstructions using only the pixels necessary to represent the scene geometry, which further reduces the computational requirements for fully dense reconstructions.


Switchable Constraints for Robust Simultaneous Localization and Mapping and Satellite-Based Localization

Switchable Constraints for Robust Simultaneous Localization and Mapping and Satellite-Based Localization
Author: Niko Sünderhauf
Publisher: Springer Nature
Total Pages: 190
Release: 2023-04-07
Genre: Technology & Engineering
ISBN: 3031240170

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Simultaneous Localization and Mapping (SLAM) has been a long-standing research problem in robotics. It describes the problem of a robot mapping an unknown environment, while simultaneously localizing in it with the help of the incomplete map. This book describes a technique called Switchable Constraints.Switchable Constraints help to increase the robustness of SLAM against data association errors and in particular against false positive loop closure detections. Such false positive loop closure detections can occur when the robot erroneously assumes it re-observed a landmark it has already mapped or when the appearance of the observed surroundings is very similar to the appearance of other places in the map. Ambiguous observations and appearances are very common in human-made environments such as office floors or suburban streets, making robustness against spurious observations a key challenge in SLAM. The book summarizes the foundations of factor graph-based SLAM techniques. It explains the problem of data association errors before introducing the novel idea of Switchable Constraints. We present a mathematical derivation and probabilistic interpretation of Switchable Constraints along with evaluations on different datasets. The book shows that Switchable Constraints are applicable beyond SLAM problems and demonstrates the efficacy of this technique to improve the quality of satellite-based localization in urban environments, where multipath and non-line-of-sight situations are common error sources.


Robotics Research

Robotics Research
Author: Cédric Pradalier
Publisher: Springer Science & Business Media
Total Pages: 752
Release: 2011-05-02
Genre: Technology & Engineering
ISBN: 3642194567

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This volume presents a collection of papers presented at the 14th International Symposium of Robotic Research (ISRR). ISRR is the biennial meeting of the International Foundation of Robotic Research (IFRR) and its 14th edition took place in Lucerne, Switzerland, from August 31st to September 3rd, 2009. As for the previous symposia, ISRR 2009 followed up on the successful concept of a mixture of invited contributions and open submissions. Half of the 48 presentations were therefore invited contributions from outstanding researchers selected by the IFRR officers, and half were chosen among the 66 submissions after peer review. This selection process resulted in a truly excellent technical program which, we believe, featured some of the very best of robotic research. Out of the 48 presentations, the 42 papers which were finally submitted for publication are organized in 8 sections that encompass the major research orientations in robotics: Navigation, Control & Planning, Human-Robot Interaction, Manipulation and Humanoids, Learning, Mapping, Multi-Robot Systems, and Micro-Robotics. They represent an excellent snapshot of cutting-edge research in robotics and outline future directions.


Practical Insights on Automotive SLAM in Urban Environments

Practical Insights on Automotive SLAM in Urban Environments
Author: Piotr Skrzypczynski
Publisher:
Total Pages: 0
Release: 2018
Genre: Technology & Engineering
ISBN:

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This chapter tackles the issues of simultaneous localization and mapping (SLAM) using laser scanners or vision as a viable alternative to the accurate modes of satellite-based localization, which are popular and easy to implement with modern technology but might fail in many urban scenarios. This chapter considers two state-of-the-art localization algorithms, LOAM and ORB-SLAM3 that use the optimization-based formulation of SLAM and utilize laser and vision sensing, respectively. The focus is on the practical aspects of localization and the accuracy of the obtained trajectories. It contributes to a series of experiments conducted using an electric car equipped with a carefully calibrated multisensory setup with a 3D laser scanner, camera, and a smartphone for collecting the exteroceptive measurements. Results of applying the two different SLAM algorithms to the data sequences collected with the vehicle-based multisensory setup clearly demonstrate that not only the expensive laser sensors but also monocular vision, including the commodity smartphone camera, can be used to obtain off-line reasonably accurate vehicle trajectories in an urban environment.


Robots, Drones, UAVs and UGVs for Operation and Maintenance

Robots, Drones, UAVs and UGVs for Operation and Maintenance
Author: Diego Galar
Publisher: CRC Press
Total Pages: 409
Release: 2020-05-07
Genre: Technology & Engineering
ISBN: 0429839189

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Industrial assets (such as railway lines, roads, pipelines) are usually huge, span long distances, and can be divided into clusters or segments that provide different levels of functionality subject to different loads, degradations and environmental conditions, and their efficient management is necessary. The aim of the book is to give comprehensive understanding about the use of autonomous vehicles (context of robotics) for the utilization of inspection and maintenance activities in industrial asset management in different accessibility and hazard levels. The usability of deploying inspection vehicles in an autonomous manner is explained with the emphasis on integrating the total process. Key Features Aims for solutions for maintenance and inspection problems provided by robotics, drones, unmanned air vehicles and unmanned ground vehicles Discusses integration of autonomous vehicles for inspection and maintenance of industrial assets Covers the industrial approach to inspection needs and presents what is needed from the infrastructure end Presents the requirements for robot designers to design an autonomous inspection and maintenance system Includes practical case studies from industries


Visual Navigation for Robots in Urban and Indoor Environments

Visual Navigation for Robots in Urban and Indoor Environments
Author: Yan Lu
Publisher:
Total Pages:
Release: 2015
Genre:
ISBN:

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As a fundamental capability for mobile robots, navigation involves multiple tasks including localization, mapping, motion planning, and obstacle avoidance. In unknown environments, a robot has to construct a map of the environment while simultaneously keeping track of its own location within the map. This is known as simultaneous localization and mapping (SLAM). For urban and indoor environments, SLAM is especially important since GPS signals are often unavailable. Visual SLAM uses cameras as the primary sensor and is a highly attractive but challenging research topic. The major challenge lies in the robustness to lighting variation and uneven feature distribution. Another challenge is to build semantic maps composed of high-level landmarks. To meet these challenges, we investigate feature fusion approaches for visual SLAM. The basic rationale is that since urban and indoor environments contain various feature types such points and lines, in combination these features should improve the robustness, and meanwhile, high-level landmarks can be defined as or derived from these combinations. We design a novel data structure, multilayer feature graph (MFG), to organize five types of features and their inner geometric relationships. Building upon a two view-based MFG prototype, we extend the application of MFG to image sequence-based mapping by using EKF. We model and analyze how errors are generated and propagated through the construction of a two view-based MFG. This enables us to treat each MFG as an observation in the EKF update step. We apply the MFG-EKF method to a building exterior mapping task and demonstrate its efficacy. Two view based MFG requires sufficient baseline to be successfully constructed, which is not always feasible. Therefore, we further devise a multiple view based algorithm to construct MFG as a global map. Our proposed algorithm takes a video stream as input, initializes and iteratively updates MFG based on extracted key frames; it also refines robot localization and MFG landmarks using local bundle adjustment. We show the advantage of our method by comparing it with state-of-the-art methods on multiple indoor and outdoor datasets. To avoid the scale ambiguity in monocular vision, we investigate the application of RGB-D for SLAM.We propose an algorithm by fusing point and line features. We extract 3D points and lines from RGB-D data, analyze their measurement uncertainties, and compute camera motion using maximum likelihood estimation. We validate our method using both uncertainty analysis and physical experiments, where it outperforms the counterparts under both constant and varying lighting conditions. Besides visual SLAM, we also study specular object avoidance, which is a great challenge for range sensors. We propose a vision-based algorithm to detect planar mirrors. We derive geometric constraints for corresponding real-virtual features across images and employ RANSAC to develop a robust detection algorithm. Our algorithm achieves a detection accuracy of 91.0%. The electronic version of this dissertation is accessible from http://hdl.handle.net/1969.1/155525