Autonomous navigation in complex environment is an important requirement for the design of a robot. Active SLAM (simultaneous localization and mapping) combining, which combine path planning with SLAM, is proposed to improve the ability of autonomous navigation in complex environment. In this paper, fully convolutional residual networks are used to recognize the obstacles to get depth image. The avoidance obstacle path is planned by Dueling DQN algorithm in the robot’s navigation; at the same time, the 2D map of the environment is built based on FastSLAM. The experiments show that the proposed algorithm can successfully identify and avoid moving and static obstacles with different quantities in the environment, and realize the autonomous na...
This thesis is focused on deep reinforcement learning for mobile robot navigation in unstructured en...
The ability to navigate unstructured environments is an essential task for intelligent systems. Auto...
Mobile robots must operate autonomously, often in unknown and unstructured environments. To achieve ...
Autonomous navigation in complex environment is an important requirement for the design of a robot. ...
In this work, an artificial intelligence approach to the problem finding a path for exploring an unk...
Purpose: This paper aims to use the Monodepth method to improve the prediction speed of identifying ...
We introduce a new autonomous path planning algorithm for mobile robots for reaching target location...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
Dynamic path planning of unknown environment has always been a challenge for mobile robots. In this ...
This work presents an artificial intelligence approach to solve the problem of finding a path and cr...
A study is presented on intelligent robotic navigation through simultaneous localization and mapping...
Autonomous navigation is a crucial prerequisite for mobile robots to perform various tasks while it ...
Autonomous navigation is one of the main areas of research in mobile robots and intelligent connecte...
Robotics has come a long way from industrial robotic arms and is all set to enter our homes. The cap...
Autonomous navigation of robots in unknown environments from their current position to a desired tar...
This thesis is focused on deep reinforcement learning for mobile robot navigation in unstructured en...
The ability to navigate unstructured environments is an essential task for intelligent systems. Auto...
Mobile robots must operate autonomously, often in unknown and unstructured environments. To achieve ...
Autonomous navigation in complex environment is an important requirement for the design of a robot. ...
In this work, an artificial intelligence approach to the problem finding a path for exploring an unk...
Purpose: This paper aims to use the Monodepth method to improve the prediction speed of identifying ...
We introduce a new autonomous path planning algorithm for mobile robots for reaching target location...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
Dynamic path planning of unknown environment has always been a challenge for mobile robots. In this ...
This work presents an artificial intelligence approach to solve the problem of finding a path and cr...
A study is presented on intelligent robotic navigation through simultaneous localization and mapping...
Autonomous navigation is a crucial prerequisite for mobile robots to perform various tasks while it ...
Autonomous navigation is one of the main areas of research in mobile robots and intelligent connecte...
Robotics has come a long way from industrial robotic arms and is all set to enter our homes. The cap...
Autonomous navigation of robots in unknown environments from their current position to a desired tar...
This thesis is focused on deep reinforcement learning for mobile robot navigation in unstructured en...
The ability to navigate unstructured environments is an essential task for intelligent systems. Auto...
Mobile robots must operate autonomously, often in unknown and unstructured environments. To achieve ...