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A New Spiking Convolutional Recurrent Neural Network (SCRNN) With Applications to Event-Based Hand Gesture Recognition

Yannan Xing, Gaetano Di Caterina, John J. Soraghan

2020Frontiers in Neuroscience102 citationsDOIOpen Access PDF

Abstract

The combination of neuromorphic visual sensors and spiking neural network offers a high efficient bio-inspired solution to real-world applications. However, processing event- based sequences remains challenging because of the nature of their asynchronism and sparsity behavior. In this paper, a novel spiking convolutional recurrent neural network (SCRNN) architecture that takes advantage of both convolution operation and recurrent connectivity to maintain the spatial and temporal relations from event-based sequence data are presented. The use of recurrent architecture enables the network to have a sampling window with an arbitrary length, allowing the network to exploit temporal correlations between event collections. Rather than standard ANN to SNN conversion techniques, the network utilizes a supervised Spike Layer Error Reassignment (SLAYER) training mechanism that allows the network to adapt to neuromorphic (event-based) data directly. The network structure is validated on the DVS gesture dataset and achieves a 10 class gesture recognition accuracy of 96.59% and an 11 class gesture recognition accuracy of 90.28%.

Topics & Concepts

Computer scienceNeuromorphic engineeringSpiking neural networkConvolutional neural networkArtificial intelligenceRecurrent neural networkEvent (particle physics)Pattern recognition (psychology)GestureConvolution (computer science)Gesture recognitionArtificial neural networkMachine learningPhysicsQuantum mechanicsAdvanced Memory and Neural ComputingHand Gesture Recognition SystemsTactile and Sensory Interactions