Title :
Simulating the evolution of 2D pattern recognition on the CAM-Brain Machine, an evolvable hardware tool for building a 75 million neuron artificial brain
Author :
De Garis, Hugo ; Korkin, Michael ; Guttikonda, Padma ; Cooley, Donald
Author_Institution :
STARLAB, Brussels, Belgium
Abstract :
This paper presents some simulation results of the evolution of 2D visual pattern recognizers to be implemented very shortly on real hardware, namely the “CAM-Brain Machine” (CBM), an FPGA based piece of evolvable hardware which implements a genetic algorithm (GA) to evolve a 3D cellular automata (CA) based neural network circuit module, of approximately 1,000 neurons, in about a second, i.e. a complete run of a GA, with tens of thousands of circuit growths and performance evaluations. Up to 65,000 of these modules, each of which is evolved with a humanly specified function, can be downloaded into a large RAM space, and interconnected according to humanly specified artificial brain architectures. This RAM, containing an artificial brain with up to 75 million neurons, is then updated by the CBM at a rate of 130 billion CA cells per second. Such speeds will enable real time control of robots and hopefully the birth of a new research field that we call “brain building”. The first such artificial brain, to be built at STARLAB in 2000 and beyond, will be used to control the behaviors of a life sized kitten robot called “Robokitty”. This kitten robot will need 2D pattern recognizers in the visual section of its artificial brain. This paper presents simulation results on the evolvability and generalization properties of such recognizers
Keywords :
cellular automata; evolutionary computation; field programmable gate arrays; image recognition; neural nets; virtual machines; 2D visual pattern recognition; 3D cellular automata based neural network circuit module; 75 million neuron artificial brain; CAM-Brain Machine; CBM; FPGA; GA; Robokitty; STARLAB; brain building; evolution simulation; evolvable hardware tool; generalization properties; genetic algorithm; life-sized kitten robot; Biological neural networks; Cellular neural networks; Circuit simulation; Field programmable gate arrays; Genetic algorithms; Neural network hardware; Neural networks; Neurons; Pattern recognition; Robots;
Conference_Titel :
Neural Networks, 2000. IJCNN 2000, Proceedings of the IEEE-INNS-ENNS International Joint Conference on
Conference_Location :
Como
Print_ISBN :
0-7695-0619-4
DOI :
10.1109/IJCNN.2000.859462