Hyperspectral Image Classification Based on Faster Residual Multi-branch Spiking Neural Network
Yang Liu, Yahui Li, Rui Li, Liming Zhou, Lanxue Dang, Huiyu Mu, and, Qiang Ge

TL;DR
This paper introduces a novel spiking neural network architecture with residual modules and an efficient derivative approximation for hyperspectral image classification, significantly reducing training and inference times while maintaining high accuracy.
Contribution
It proposes SNN-SWMR, a residual spiking neural network with a new derivative approximation, enabling faster training and inference for hyperspectral image classification.
Findings
Achieves about 84% reduction in time steps needed.
Reduces training and testing times by approximately 63% and 70%.
Maintains comparable classification accuracy with existing methods.
Abstract
Convolutional neural network (CNN) performs well in Hyperspectral Image (HSI) classification tasks, but its high energy consumption and complex network structure make it difficult to directly apply it to edge computing devices. At present, spiking neural networks (SNN) have developed rapidly in HSI classification tasks due to their low energy consumption and event driven characteristics. However, it usually requires a longer time step to achieve optimal accuracy. In response to the above problems, this paper builds a spiking neural network (SNN-SWMR) based on the leaky integrate-and-fire (LIF) neuron model for HSI classification tasks. The network uses the spiking width mixed residual (SWMR) module as the basic unit to perform feature extraction operations. The spiking width mixed residual module is composed of spiking mixed convolution (SMC), which can effectively extract…
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Taxonomy
TopicsRemote Sensing and Land Use · Remote-Sensing Image Classification · Infrared Target Detection Methodologies
MethodsSpiking Neural Networks · Convolution
