2 research outputs found
Adaptive map alignment in the superior colliculus of the barn owl: a neuromorphic implementation
Adaptation is one of the basic phenomena of biology, while adaptability is an important
feature for neural network. Young barn owl can well adapt its visual and auditory
integration to the environmental change, such as prism wearing.
At first, a mathematical model is introduced by the related study in biological experiment.
The model well explained the mechanism of the sensory map realignment
through axongenesis and synaptogenesis. Simulation results of this model are consistent
with the biological data.
Thereafter, to test the model’s application in hardware, the model is implemented
into a robot. Visual and auditory signals are acquired by the sensors of the robot
and transferred back to PC through bluetooth. Results of the robot experiment are
presented, which shows the SC model allowing the robot to adjust visual and auditory
integration to counteract the effects of a prism.
Finally, based on the model, a silicon Superior Colliculus is designed in VLSI circuit
and fabricated. Performance of the fabricated chip has shown the synaptogenesis
and axogenesis can be emulated in VLSI circuit. The circuit of neural model provides
a new method to update signals and reconfigure the switch network (the chip has an
automatic reconfigurable network which is used to correct the disparity between signals).
The chip is also the first Superior Colliculus VLSI circuit to emulate the sensory
map realignment