Title
Incremental Learning-Based Adaptive Object Recognition for Mobile Robots
Author
Turkoglu, M.O.
ter Haar, F.B.
van der Stap, N.
Publication year
2018
Abstract
3D visual understanding of the surrounding environment is vital for successful mobile robotic tasks such as autonomous navigation or general object interaction. However, current systems have limited perceptual capabilities in the sense that they are not very well adaptable to unknown environments. Human operators, on the other hand, are experts in adapting to previously unknown information. Hence, human-robot teaming in which the human helps the robot to adapt to new environments and the robot assists in automated object recognition to efficiently feed the control environment of the operator is advantageous. In this work, we propose an object recognition and localization system for mobile robots, based on deep learning, and we study the adaptation of the resulting robotic perception to a new environment. We propose two methods to teach the robot a new object category: using prior knowledge and using limited operator input. We conducted several experiments to show the feasibility of proposed methods. © 2018 IEEE.
Subject
Deep learning
Intelligent robots
Mobile robots
Robotics
Visual servoing
Adaptive object recognition
Automated object recognition
Autonomous navigation
Control environment
Incremental learning
Object interactions
Object recognition and localization
Surrounding environment
Object recognition
To reference this document use:
http://resolver.tudelft.nl/uuid:85925e7a-0867-4e22-ab0b-eb8493f84c08
TNO identifier
865909
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISBN
9781538680940
ISSN
2153-0858
Source
IEEE International Conference on Intelligent Robots and Systems, 2018 IEEE/RSJ International Conference on Intelligent Robots and Systems, IROS 2018, 1 October 2018 through 5 October 2018, 6263-6268
Article number
8593810
Document type
conference paper