Title :
Mobile robot navigation using neural networks and nonmetrical environmental models
Author :
Meng, Min ; Kak, A.C.
Author_Institution :
Robot Vision Lab., Purdue Univ., West Lafayette, IN, USA
Abstract :
A reasoning and control architecture for vision-guided navigation that makes a robot more humanlike is presented. This system, called NEURO-NAV, discards the more traditional geometrical representation of the environment, and instead uses a semantically richer nonmetrical representation in which a hallway is modeled by the order of appearance of various landmarks and by adjacency relationships. With such a representation, it becomes possible for the robot to respond to commands such as, ´follow the corridor and turn right at the second T junction´. This capability is achieved by an ensemble of neural networks whose activation and deactivation are controlled by a rule-based supervisory controller. The individual neural networks in the ensemble are trained to interpret visual information and perform primitive navigational tasks such as hallway following and landmark detection.<>
Keywords :
computer vision; computerised navigation; intelligent control; mobile robots; neural nets; NEURO-NAV; adjacency relationships; hallway following; landmark detection; mobile robot navigation; neural networks; nonmetrical environmental models; nonmetrical representation; rule-based supervisory controller; Data mining; Humans; Indoor environments; Mobile robots; Navigation; Neural networks; Robot kinematics; Robot vision systems; Robust control; Solid modeling;
Journal_Title :
Control Systems, IEEE