We present a spiking neural network (SNN) for visual pattern recognition with on-chip learning on neuromorphic hardware. We show how this network can learn simple visual patterns composed of horizontal and vertical bars sensed by a Dynamic Vision Sensor, using a local spike-based plasticity rule. During recognition, the network classifies the pattern's identity while at the same time estimating its location and scale. We build on previous work that used learning with neuromorphic hardware in the loop and demonstrate that the proposed network can properly operate with on-chip learning, demonstrating a complete neuromorphic pattern learning and recognition setup. Our results show that the network is robust against noise on the input (no accur...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
In this paper we present the biologically inspired Ripple Pond Network (RPN), a simply connected spi...
Today, increasing attention is being paid to research into spike-based neural computation both to ga...
Mixed-signal analog/digital neuromorphic circuits are characterized by ultra-low power consumption, ...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
Online monitoring applications requiring advanced pattern recognition capabilities implemented in re...
This paper presents a neuromorphic system for visual pattern recognition realized in hardware. A new...
The recent development of power-efficient neuromorphic hardware offers great opportunities for appli...
Most of visual pattern recognition algorithms try to emulate the mechanism of visual pathway within ...
Electrophysiological studies have shown that mammalian primary visual cortex are selective for the o...
Neuromorphic hardware inspired by the brain has attracted much attention for its advanced informatio...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
Deep neural networks have surpassed human performance in key visual challenges such as object recogn...
This paper presents an IC implementation of on-chip learning neuromorphic autoencoder unit in a form...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
In this paper we present the biologically inspired Ripple Pond Network (RPN), a simply connected spi...
Today, increasing attention is being paid to research into spike-based neural computation both to ga...
Mixed-signal analog/digital neuromorphic circuits are characterized by ultra-low power consumption, ...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
Online monitoring applications requiring advanced pattern recognition capabilities implemented in re...
This paper presents a neuromorphic system for visual pattern recognition realized in hardware. A new...
The recent development of power-efficient neuromorphic hardware offers great opportunities for appli...
Most of visual pattern recognition algorithms try to emulate the mechanism of visual pathway within ...
Electrophysiological studies have shown that mammalian primary visual cortex are selective for the o...
Neuromorphic hardware inspired by the brain has attracted much attention for its advanced informatio...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
Deep neural networks have surpassed human performance in key visual challenges such as object recogn...
This paper presents an IC implementation of on-chip learning neuromorphic autoencoder unit in a form...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
In this paper we present the biologically inspired Ripple Pond Network (RPN), a simply connected spi...
Today, increasing attention is being paid to research into spike-based neural computation both to ga...