Visual object detection is one of the fundamental tasks in computer vision and robotics. Small scale, partial capture and occlusion often occur in robotic applications, most existing object detection algorithms perform poorly in such situations. While a robot can look at one object from different views and plan its trajectory in the next few steps, which can lead to better observations. We formulate it as a sequential action-decision process, and develop a deep reinforcement learning architecture to solve the active object detection problem. A double deep Q-learning network (DQN) is applied to predict an action at each step. Experimental validation on the Active Vision Dataset shows the efficiency of the proposed method
A mobile agent with the task to classify its sensor pattern has to cope with ambiguous information. ...
The complexity of object tracking models among hardware applications has become a more in-demand tas...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
Visual object detection is one of the fundamental tasks in computer vision and robotics. Small scale...
In recent years, great success has been achieved in visual object detection, which is one of the fun...
In recent years, great success has been achieved in visual object detection, which is one of the fun...
In this work, we examine the literature of active object recognition in the past and present. We not...
In this paper, we present an active vision method using a deep reinforcement learning approach for ...
An active object recognition system has the advantage of acting in the environment to capture images...
In this contribution, we present our research line on Deep Reinforcement Learning approaches for rob...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
In recent years, deep reinforcement learning has increasingly contributed to the development of robo...
A study is presented on visual navigation of wheeled mobile robots (WMR) using deep reinforcement le...
Deep reinforcement learning (DRL) exhibits a promising approach for controlling humanoid robot loc...
Obstacle avoidance is a fundamental requirement for autonomous robots which operate in, and interact...
A mobile agent with the task to classify its sensor pattern has to cope with ambiguous information. ...
The complexity of object tracking models among hardware applications has become a more in-demand tas...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
Visual object detection is one of the fundamental tasks in computer vision and robotics. Small scale...
In recent years, great success has been achieved in visual object detection, which is one of the fun...
In recent years, great success has been achieved in visual object detection, which is one of the fun...
In this work, we examine the literature of active object recognition in the past and present. We not...
In this paper, we present an active vision method using a deep reinforcement learning approach for ...
An active object recognition system has the advantage of acting in the environment to capture images...
In this contribution, we present our research line on Deep Reinforcement Learning approaches for rob...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
In recent years, deep reinforcement learning has increasingly contributed to the development of robo...
A study is presented on visual navigation of wheeled mobile robots (WMR) using deep reinforcement le...
Deep reinforcement learning (DRL) exhibits a promising approach for controlling humanoid robot loc...
Obstacle avoidance is a fundamental requirement for autonomous robots which operate in, and interact...
A mobile agent with the task to classify its sensor pattern has to cope with ambiguous information. ...
The complexity of object tracking models among hardware applications has become a more in-demand tas...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...