Hyperspectral Image Classification Based on Faster Residual Multi-branch Spiking Neural Network
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...
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Zusammenfassung: | 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 spatial-spectral
features. Secondly, this paper designs a simple and efficient arcsine
approximate derivative (AAD), which solves the non-differentiable problem of
spike firing by fitting the Dirac function. Through AAD, we can directly train
supervised spike neural networks. Finally, this paper conducts comparative
experiments with multiple advanced HSI classification algorithms based on
spiking neural networks on six public hyperspectral data sets. Experimental
results show that the AAD function has strong robustness and a good fitting
effect. Meanwhile, compared with other algorithms, SNN-SWMR requires a time
step reduction of about 84%, training time, and testing time reduction of about
63% and 70% at the same accuracy. This study solves the key problem of SNN
based HSI classification algorithms, which has important practical significance
for promoting the practical application of HSI classification algorithms in
edge devices such as spaceborne and airborne devices. |
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DOI: | 10.48550/arxiv.2409.11619 |