Learning Concepts from Sensor Data of a Mobile Robot
Abstract
Machine learning can be a most valuable tool for improving the flexibility and efficiency of robot applications. Many approaches to applying machine learning to robotics are known. Some approaches enhance the robot's high-level processing, the planning capabilities. Other approaches enhance the low-level processing, the control of basic actions. In contrast, the approach presented in this paper uses machine learning for enhancing the link between the low-level representations of sensing and action and the high-level representation of planning. The aim is to facilitate the communication between the robot and the human user. A hierarchy of concepts is learned from route records of a mobile robot. Perception and action are combined at every level, i.e., the concepts are perceptually anchored. The relational learning algorithm GRDT has been developed which completely searches in a hypothesis space, that is restricted by rule schemata, which the user defines in terms of grammars.
Cite
Text
Klingspor et al. "Learning Concepts from Sensor Data of a Mobile Robot." Machine Learning, 1996. doi:10.1023/A:1018245209731Markdown
[Klingspor et al. "Learning Concepts from Sensor Data of a Mobile Robot." Machine Learning, 1996.](https://mlanthology.org/mlj/1996/klingspor1996mlj-learning/) doi:10.1023/A:1018245209731BibTeX
@article{klingspor1996mlj-learning,
title = {{Learning Concepts from Sensor Data of a Mobile Robot}},
author = {Klingspor, Volker and Morik, Katharina and Rieger, Anke D.},
journal = {Machine Learning},
year = {1996},
pages = {305-332},
doi = {10.1023/A:1018245209731},
volume = {23},
url = {https://mlanthology.org/mlj/1996/klingspor1996mlj-learning/}
}