Title :
Cognitive navigation based on nonuniform Gabor space sampling, unsupervised growing networks, and reinforcement learning
Author :
Arleo, Angelo ; Smeraldi, Fabrizio ; Gerstner, Wulfram
Author_Institution :
Neurosci. Group, SONY Comput. Sci. Lab., Paris, France
fDate :
5/1/2004 12:00:00 AM
Abstract :
We study spatial learning and navigation for autonomous agents. A state space representation is constructed by unsupervised Hebbian learning during exploration. As a result of learning, a representation of the continuous two-dimensional (2-D) manifold in the high-dimensional input space is found. The representation consists of a population of localized overlapping place fields covering the 2-D space densely and uniformly. This space coding is comparable to the representation provided by hippocampal place cells in rats. Place fields are learned by extracting spatio-temporal properties of the environment from sensory inputs. The visual scene is modeled using the responses of modified Gabor filters placed at the nodes of a sparse Log-polar graph. Visual sensory aliasing is eliminated by taking into account self-motion signals via path integration. This solves the hidden state problem and provides a suitable representation for applying reinforcement learning in continuous space for action selection. A temporal-difference prediction scheme is used to learn sensorimotor mappings to perform goal-oriented navigation. Population vector coding is employed to interpret ensemble neural activity. The model is validated on a mobile Khepera miniature robot.
Keywords :
Hebbian learning; cognitive systems; mobile robots; navigation; neural net architecture; path planning; robot vision; unsupervised learning; autonomous agent navigation; cognitive navigation; localized overlapping place; mobile Khepera miniature robot; nonuniform Gabor space sampling; rats hippocampal place cells; reinforcement learning; self-motion signals; space coding; sparse Log-polar graph; spatial learning; spatiotemporal properties; state space representation; unsupervised Hebbian learning; unsupervised growing networks; visual sensory; Autonomous agents; Gabor filters; Hebbian theory; Layout; Learning; Navigation; Rats; Sampling methods; State-space methods; Two dimensional displays; Cognition; Learning; Neural Networks (Computer); Reinforcement (Psychology);
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2004.826221