Event-Driven Tactile Learning with Location Spiking Neurons

July 23, 2022 ยท Entered Twilight ยท + Add venue

๐Ÿ’ค TWILIGHT: Eternal Rest
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Repo contents: LICENSE, LSN.png, README.md, confusion, datasets, hybrid.png, locsnn, network_config, requirements.txt, slayerPytorch, timestep_inference

Authors Peng Kang, Srutarshi Banerjee, Henry Chopp, Aggelos Katsaggelos, Oliver Cossairt arXiv ID 2209.01080 Category cs.NE: Neural & Evolutionary Cross-listed cs.AI, cs.LG, cs.RO Citations 0 Repository https://github.com/pkang2017/TactileLocNeurons โญ 5 Last Checked 3 months ago
Abstract
The sense of touch is essential for a variety of daily tasks. New advances in event-based tactile sensors and Spiking Neural Networks (SNNs) spur the research in event-driven tactile learning. However, SNN-enabled event-driven tactile learning is still in its infancy due to the limited representative abilities of existing spiking neurons and high spatio-temporal complexity in the data. In this paper, to improve the representative capabilities of existing spiking neurons, we propose a novel neuron model called "location spiking neuron", which enables us to extract features of event-based data in a novel way. Moreover, based on the classical Time Spike Response Model (TSRM), we develop a specific location spiking neuron model - Location Spike Response Model (LSRM) that serves as a new building block of SNNs. Furthermore, we propose a hybrid model which combines an SNN with TSRM neurons and an SNN with LSRM neurons to capture the complex spatio-temporal dependencies in the data. Extensive experiments demonstrate the significant improvements of our models over other works on event-driven tactile learning and show the superior energy efficiency of our models and location spiking neurons, which may unlock their potential on neuromorphic hardware.
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