Spatiotemporal Spike-Pattern Selectivity in Single Mixed-Signal Neurons with Balanced Synapses

06/10/2021
by   Mattias Nilsson, et al.
0

Realizing the potential of mixed-signal neuromorphic processors for ultra-low-power inference and learning requires efficient use of their inhomogeneous analog circuitry as well as sparse, time-based information encoding and processing. Here, we investigate spike-timing-based spatiotemporal receptive fields of output-neurons in the Spatiotemporal Correlator (STC) network, for which we used excitatory-inhibitory balanced disynaptic inputs instead of dedicated axonal or neuronal delays. We present hardware-in-the-loop experiments with a mixed-signal DYNAP-SE neuromorphic processor, in which five-dimensional receptive fields of hardware neurons were mapped by randomly sampling input spike-patterns from a uniform distribution. We find that, when the balanced disynaptic elements are randomly programmed, some of the neurons display distinct receptive fields. Furthermore, we demonstrate how a neuron was tuned to detect a particular spatiotemporal feature, to which it initially was non-selective, by activating a different subset of the inhomogeneous analog synaptic circuits. The energy dissipation of the balanced synaptic elements is one order of magnitude lower per lateral connection (0.65 nJ vs 9.3 nJ per spike) than former delay-based neuromorphic hardware implementations. Thus, we show how the inhomogeneous synaptic circuits could be utilized for resource-efficient implementation of STC network layers, in a way that enables synapse-address reprogramming as a discrete mechanism for feature tuning.

READ FULL TEXT
research
02/12/2020

Synaptic Integration of Spatiotemporal Features with a Dynamic Neuromorphic Processor

Spiking neurons can perform spatiotemporal feature detection by nonlinea...
research
03/21/2017

An Accelerated Analog Neuromorphic Hardware System Emulating NMDA- and Calcium-Based Non-Linear Dendrites

This paper presents an extension of the BrainScaleS accelerated analog n...
research
06/28/2019

Synaptic Delays for Temporal Feature Detection in Dynamic Neuromorphic Processors

Spiking neural networks implemented in dynamic neuromorphic processors a...
research
10/24/2016

STDP allows close-to-optimal spatiotemporal spike pattern detection by single coincidence detector neurons

By recording multiple cells simultaneously, electrophysiologists have fo...
research
12/27/2019

Structural plasticity on an accelerated analog neuromorphic hardware system

In computational neuroscience, as well as in machine learning, neuromorp...
research
03/01/2018

Optimal localist and distributed coding of spatiotemporal spike patterns through STDP and coincidence detection

Repeating spatiotemporal spike patterns exist and carry information. Her...
research
11/06/2013

Delay Learning Architectures for Memory and Classification

We present a neuromorphic spiking neural network, the DELTRON, that can ...

Please sign up or login with your details

Forgot password? Click here to reset