We present a neuromorphic spiking neural network, the DELTRON, that can remember and store patterns by changing the delays of every connection as opposed to modifying the weights. The advantage of this architecture over traditional weight based ones is simpler hardware implementation without multipliers or digital-analog converters (DACs). The name is derived due to similarity in the learning rule with an earlier architecture called Tempotron. We present simulations of memory capacity of the DELTRON for different random spatio-temporal spike patterns and also present SPICE simulation results of the core circuits involved in a reconfigurable mixed signal implementation of this architecture
<p>In recent years, neuromorphic architectures have been an increasingly effective tool used to solv...
International audienceNeuromorphic computing is henceforth a major research field for both academic ...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...
We present a neuromorphic spiking neural network, the DELTRON, that can remember and store patterns ...
We present a neuromorphic spiking neural network, the DELTRON, that can remember and store patterns ...
The object of this thesis is to investigate polychronous spiking neural networks using neuromorphic ...
We present a mixed-signal implementation of a re-configurable polychronous spiking neural network ca...
We present a mixed-signal implementation of a re-configurable polychronous spiking neural network ca...
Mixed-signal neuromorphic processors have brain-like organization and device physics optimized for e...
We present an FPGA implementation of a re-configurable, polychronous spiking neural network with a l...
We present a neuromorphic implementation of multiple synaptic plasticity learning rules, which inclu...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Mixed-signal neuromorphic processors emulate the electrochemical dynamics of neurons and synapses us...
In recent years the field of neuromorphic low-power systems gained significant momentum, spurring br...
This thesis describes the design and implementation of two pattern recognition systems on field-prog...
<p>In recent years, neuromorphic architectures have been an increasingly effective tool used to solv...
International audienceNeuromorphic computing is henceforth a major research field for both academic ...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...
We present a neuromorphic spiking neural network, the DELTRON, that can remember and store patterns ...
We present a neuromorphic spiking neural network, the DELTRON, that can remember and store patterns ...
The object of this thesis is to investigate polychronous spiking neural networks using neuromorphic ...
We present a mixed-signal implementation of a re-configurable polychronous spiking neural network ca...
We present a mixed-signal implementation of a re-configurable polychronous spiking neural network ca...
Mixed-signal neuromorphic processors have brain-like organization and device physics optimized for e...
We present an FPGA implementation of a re-configurable, polychronous spiking neural network with a l...
We present a neuromorphic implementation of multiple synaptic plasticity learning rules, which inclu...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Mixed-signal neuromorphic processors emulate the electrochemical dynamics of neurons and synapses us...
In recent years the field of neuromorphic low-power systems gained significant momentum, spurring br...
This thesis describes the design and implementation of two pattern recognition systems on field-prog...
<p>In recent years, neuromorphic architectures have been an increasingly effective tool used to solv...
International audienceNeuromorphic computing is henceforth a major research field for both academic ...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...