Boost Event-Driven Tactile Learning with Location Spiking Neurons
Peng Kang, Srutarshi Banerjee, Henry Chopp, Aggelos Katsaggelos,, Oliver Cossairt

TL;DR
This paper introduces location spiking neurons to enhance event-driven tactile learning, significantly improving representation capabilities and energy efficiency over existing models and state-of-the-art methods.
Contribution
It proposes novel location spiking neuron models based on TSRM and TLIF, and hybrid SNN architectures that better capture spatio-temporal dependencies in tactile data.
Findings
Models outperform state-of-the-art methods in tactile learning accuracy.
SNN models are 10x to 100x more energy-efficient than artificial neural networks.
Proposed neurons effectively capture complex spatio-temporal features.
Abstract
Tactile sensing is essential for a variety of daily tasks. And recent advances in event-driven tactile sensors and Spiking Neural Networks (SNNs) spur the research in related fields. However, SNN-enabled event-driven tactile learning is still in its infancy due to the limited representation abilities of existing spiking neurons and high spatio-temporal complexity in the event-driven tactile data. In this paper, to improve the representation capability 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. Specifically, based on the classical Time Spike Response Model (TSRM), we develop the Location Spike Response Model (LSRM). In addition, based on the most commonly-used Time Leaky Integrate-and-Fire (TLIF) model, we develop the Location Leaky Integrate-and-Fire (LLIF) model.…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Advanced Sensor and Energy Harvesting Materials · EEG and Brain-Computer Interfaces
MethodsGraph Neural Network
