Title
Self-adaptive Context Aware Audio Localization for Robots Using Parallel Cerebellar Models.
Abstract
An audio sensor system is presented that uses multiple cerebellar models to determine the acoustic environment in which a robot is operating, allowing the robot to select appropriate models to calibrate its audio-motor map for the detected environment. There are two key areas of novelty here. One is the application of cerebellar models in a new context, that is auditory sensory input. The second is the idea of applying a multiple models approach to motor control to a sensory problem rather than a motor problem. The use of the adaptive filter model of the cerebellum in a variety of robotics applications has demonstrated the utility of the so-called cerebellar chip. This paper combines the notion of cerebellar calibration of a distorted audio-motor map with the use of multiple parallel models to predict the context (acoustic environment) within which the robot is operating. The system was able to correctly predict seven different acoustic contexts in almost 70% of cases tested.
Year
DOI
Venue
2017
10.1007/978-3-319-64107-2_6
Lecture Notes in Computer Science
Field
DocType
Volume
Computer vision,Computer science,Chip,Motor control,Adaptive filter,Artificial intelligence,Novelty,Robot,Sensory system,Cerebellum,Robotics
Conference
10454
ISSN
Citations 
PageRank 
0302-9743
0
0.34
References 
Authors
4
5
Name
Order
Citations
PageRank
M. D. Baxendale100.34
Martin J. Pearson221526.34
Mokhtar Nibouche35011.87
Emanuele Lindo Secco47110.43
Anthony G. Pipe525539.08