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      An Event-Driven Classifier for Spiking Neural Networks Fed with Synthetic or Dynamic Vision Sensor Data

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          Abstract

          This paper introduces a novel methodology for training an event-driven classifier within a Spiking Neural Network (SNN) System capable of yielding good classification results when using both synthetic input data and real data captured from Dynamic Vision Sensor (DVS) chips. The proposed supervised method uses the spiking activity provided by an arbitrary topology of prior SNN layers to build histograms and train the classifier in the frame domain using the stochastic gradient descent algorithm. In addition, this approach can cope with leaky integrate-and-fire neuron models within the SNN, a desirable feature for real-world SNN applications, where neural activation must fade away after some time in the absence of inputs. Consequently, this way of building histograms captures the dynamics of spikes immediately before the classifier. We tested our method on the MNIST data set using different synthetic encodings and real DVS sensory data sets such as N-MNIST, MNIST-DVS, and Poker-DVS using the same network topology and feature maps. We demonstrate the effectiveness of our approach by achieving the highest classification accuracy reported on the N-MNIST (97.77%) and Poker-DVS (100%) real DVS data sets to date with a spiking convolutional network. Moreover, by using the proposed method we were able to retrain the output layer of a previously reported spiking neural network and increase its performance by 2%, suggesting that the proposed classifier can be used as the output layer in works where features are extracted using unsupervised spike-based learning methods. In addition, we also analyze SNN performance figures such as total event activity and network latencies, which are relevant for eventual hardware implementations. In summary, the paper aggregates unsupervised-trained SNNs with a supervised-trained SNN classifier, combining and applying them to heterogeneous sets of benchmarks, both synthetic and from real DVS chips.

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          Deep Learning in Neural Networks: An Overview

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                Author and article information

                Contributors
                Journal
                Front Neurosci
                Front Neurosci
                Front. Neurosci.
                Frontiers in Neuroscience
                Frontiers Media S.A.
                1662-4548
                1662-453X
                28 June 2017
                2017
                : 11
                : 350
                Affiliations
                Instituto de Microelectrónica de Sevilla (CNM), Consejo Superior de Investigaciones Científicas (CSIC), Universidad de Sevilla Sevilla, Spain
                Author notes

                Edited by: Emre O. Neftci, University of California, Irvine, United States

                Reviewed by: Hesham Mostafa, University of California, San Diego, United States; Thomas Nowotny, University of Sussex, United Kingdom

                *Correspondence: Bernabé Linares-Barranco bernabe@ 123456imse-cnm.csic.es

                This article was submitted to Neuromorphic Engineering, a section of the journal Frontiers in Neuroscience

                †These authors have contributed equally to this work.

                Article
                10.3389/fnins.2017.00350
                5487436
                28701911
                5bbc5015-045d-4713-836e-ea90741d9493
                Copyright © 2017 Stromatias, Soto, Serrano-Gotarredona and Linares-Barranco.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 24 March 2017
                : 06 June 2017
                Page count
                Figures: 9, Tables: 7, Equations: 7, References: 66, Pages: 17, Words: 11639
                Categories
                Neuroscience
                Original Research

                Neurosciences
                spiking neural networks,supervised learning,event driven processing,dvs sensors,convolutional neural networks,fully connected neural networks,neuromorphic

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