Efficient Federated Learning with Spike Neural Networks for Traffic Sign Recognition
Kan Xie, Zhe Zhang, Bo Li, Jiawen Kang, Dusit Niyato, Shengli Xie, Yi, Wu

TL;DR
This paper proposes a privacy-preserving federated learning framework using Spike Neural Networks for traffic sign recognition in IoV, achieving high accuracy and energy efficiency suitable for resource-constrained vehicles.
Contribution
It introduces a novel federated learning approach with SNNs and a new encoding scheme tailored for traffic sign recognition in IoV scenarios.
Findings
Federated SNN outperforms traditional CNNs in accuracy.
The approach enhances noise immunity and energy efficiency.
Effective for privacy-preserving traffic sign recognition in IoV.
Abstract
With the gradual popularization of self-driving, it is becoming increasingly important for vehicles to smartly make the right driving decisions and autonomously obey traffic rules by correctly recognizing traffic signs. However, for machine learning-based traffic sign recognition on the Internet of Vehicles (IoV), a large amount of traffic sign data from distributed vehicles is needed to be gathered in a centralized server for model training, which brings serious privacy leakage risk because of traffic sign data containing lots of location privacy information. To address this issue, we first exploit privacy-preserving federated learning to perform collaborative training for accurate recognition models without sharing raw traffic sign data. Nevertheless, due to the limited computing and energy resources of most devices, it is hard for vehicles to continuously undertake complex artificial…
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Taxonomy
TopicsAdvanced Neural Network Applications · Adversarial Robustness in Machine Learning · Traffic Prediction and Management Techniques
