CVLGJun 21, 2022

An Efficient Industrial Federated Learning Framework for AIoT: A Face Recognition Application

arXiv:2206.13398v27 citationsh-index: 111
Originality Incremental advance
AI Analysis

This addresses efficiency and privacy issues in industrial AIoT applications, but it is incremental as it builds on existing federated learning methods.

The paper tackles the challenge of applying federated learning to AIoT under data privacy constraints by proposing an efficient framework for face recognition, achieving high accuracy in only 20 communication rounds.

Recently, the artificial intelligence of things (AIoT) has been gaining increasing attention, with an intriguing vision of providing highly intelligent services through the network connection of things, leading to an advanced AI-driven ecology. However, recent regulatory restrictions on data privacy preclude uploading sensitive local data to data centers and utilizing them in a centralized approach. Directly applying federated learning algorithms in this scenario could hardly meet the industrial requirements of both efficiency and accuracy. Therefore, we propose an efficient industrial federated learning framework for AIoT in terms of a face recognition application. Specifically, we propose to utilize the concept of transfer learning to speed up federated training on devices and further present a novel design of a private projector that helps protect shared gradients without incurring additional memory consumption or computational cost. Empirical studies on a private Asian face dataset show that our approach can achieve high recognition accuracy in only 20 communication rounds, demonstrating its effectiveness in prediction and its efficiency in training.

Foundations

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