4.7 Article

Evaluation of Spiking Neural Nets-Based Image Classification Using the Runtime Simulator RAVSim

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WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0129065723500442

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Spiking neural networks; image classification; neural model; runtime simulator; machine learning; LIF model; neural engineering framework

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Spiking Neural Networks (SNNs) achieve brain-like efficiency and functionality by mimicking the transmission of electrical signals in the human brain. We introduced the first runtime interactive simulator, RAVSim, which allows end-users to interact, observe outputs, and make changes during simulation. This tool not only increases network design speed but also accelerates user learning capability.
Spiking Neural Networks (SNNs) help achieve brain-like efficiency and functionality by building neurons and synapses that mimic the human brain's transmission of electrical signals. However, optimal SNN implementation requires a precise balance of parametric values. To design such ubiquitous neural networks, a graphical tool for visualizing, analyzing, and explaining the internal behavior of spikes is crucial. Although some popular SNN simulators are available, these tools do not allow users to interact with the neural network during simulation. To this end, we have introduced the first runtime interactive simulator, called Runtime Analyzing and Visualization Simulator (RAVSim),(a) developed to analyze and dynamically visualize the behavior of SNNs, allowing end-users to interact, observe output concentration reactions, and make changes directly during the simulation. In this paper, we present RAVSim with the current implementation of runtime interaction using the LIF neural model with different connectivity schemes, an image classification model using SNNs, and a dataset creation feature. Our main objective is to primarily investigate binary classification using SNNs with RGB images. We created a feed-forward network using the LIF neural model for an image classification algorithm and evaluated it by using RAVSim. The algorithm classifies faces with and without masks, achieving an accuracy of 91.8% using 1000 neurons in a hidden layer, 0.0758 MSE, and an execution time of similar to 10min on the CPU. The experimental results show that using RAVSim not only increases network design speed but also accelerates user learning capability.

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