The paper describes the implementation of an Autonomous Mobile Robot able to navigate the environment by combining range and odometry data from LiDAR and wheel encoders sensors in the Robot Operating System (ROS) framework. The SLAM algorithm uses this sensory information to produce a static map of the environment. This is then relied upon by the navigation stack of the framework to navigate the environment, where the sensor data is used to localize the robot in the map and to calculate an optimal trajectory towards a set destination that avoids static and dynamic obstacles. The system is tested in simulated and real scenarios and the main challenges of mapping and navigation are surveyed. The different approaches are then discussed with a ...
This paper proposes a practical solution to the autonomous exploration and mapping problem using a s...
This thesis deals with the design of a mobile robotic platform with the ability to build a map with ...
In this paper, we present an integrated solution to memory-efficient environment modeling by an auto...
This paper describes an algorithm that performs an contur analyzing of an environment with a single ...
This thesis fell within the project by the Borobo company located in Nice, France, to build an auton...
This paper presents the implementation of a simultaneous localization and mapping (SLAM) algorithm f...
Simultaneous Localization and Mapping (SLAM) is a core component for the successful implementation o...
In this thesis, the simulation-based investigation of a Turtlebot mobile robot in an environment cre...
This work describes the design, development and implementation of a SLAM (Simultaneous Localization ...
This article proposes highly autonomous map generation and path navigation based on the Robot Operat...
This thesis provides techniques to address some outstanding problems in robotic navigation in relati...
An a priori map is often unavailable for a mobile robot in an unknown environment. In large spaces, ...
Positioning mobile systems with high accuracy is a prerequisite for intelligent autonomous behavior,...
Aiming at the problems of low mapping accuracy, slow path planning efficiency, and high radar freque...
Autonomous navigation is absolutely necessary in mobile-robotic, which consists of four main compone...
This paper proposes a practical solution to the autonomous exploration and mapping problem using a s...
This thesis deals with the design of a mobile robotic platform with the ability to build a map with ...
In this paper, we present an integrated solution to memory-efficient environment modeling by an auto...
This paper describes an algorithm that performs an contur analyzing of an environment with a single ...
This thesis fell within the project by the Borobo company located in Nice, France, to build an auton...
This paper presents the implementation of a simultaneous localization and mapping (SLAM) algorithm f...
Simultaneous Localization and Mapping (SLAM) is a core component for the successful implementation o...
In this thesis, the simulation-based investigation of a Turtlebot mobile robot in an environment cre...
This work describes the design, development and implementation of a SLAM (Simultaneous Localization ...
This article proposes highly autonomous map generation and path navigation based on the Robot Operat...
This thesis provides techniques to address some outstanding problems in robotic navigation in relati...
An a priori map is often unavailable for a mobile robot in an unknown environment. In large spaces, ...
Positioning mobile systems with high accuracy is a prerequisite for intelligent autonomous behavior,...
Aiming at the problems of low mapping accuracy, slow path planning efficiency, and high radar freque...
Autonomous navigation is absolutely necessary in mobile-robotic, which consists of four main compone...
This paper proposes a practical solution to the autonomous exploration and mapping problem using a s...
This thesis deals with the design of a mobile robotic platform with the ability to build a map with ...
In this paper, we present an integrated solution to memory-efficient environment modeling by an auto...