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  4. FLCrypt - Secure Federated Learning for Audio Event Classification Using Homomorphic Encryption
 
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September 30, 2024
Conference Paper
Title

FLCrypt - Secure Federated Learning for Audio Event Classification Using Homomorphic Encryption

Abstract
In this paper, we introduce FLCrypt 1 1, a library designed to enhance Federated Learning with additional privacy guarantees by applying Fully Homomorphic Encryption to the model aggregation stage, thereby preventing the aggregator from accessing the unencrypted model parameters of the training participants. We evaluate our approach by comparing its accuracy against an unencrypted baseline using an audio classification task aimed at distinguishing metal balls with different surfaces, which serves as a proxy for fault detection in industrial sound analysis. Our findings indicate a marginal decrease in accuracy due to applying Fully Homomorphic Encryption, alongside a significant increase in both runtime and memory demands. Our analysis also concludes that runtime increases linearly with the number of model parameters. Our results lead us to affirm the viability of FLCrypt for Federated Learning applications in acoustic sensor networks with elevated security requirements such as sound classification.
Author(s)
Fuhrmeister, Kay Christopher
Fraunhofer-Institut für Digitale Medientechnologie IDMT  
Cui, Hao
Fraunhofer-Institut für Digitale Medientechnologie IDMT  
Yaroshchuk, Artem
Fraunhofer-Institut für Digitale Medientechnologie IDMT  
Köllmer, Thomas  
Fraunhofer-Institut für Digitale Medientechnologie IDMT  
Mainwork
IEEE 5th International Symposium on the Internet of Sounds 2024  
Conference
International Symposium on the Internet of Sounds 2024  
DOI
10.1109/IS262782.2024.10704107
Language
English
Fraunhofer-Institut für Digitale Medientechnologie IDMT  
Keyword(s)
  • Training

  • Analytical models

  • Privacy

  • Runtime

  • Accuracy

  • Federated learning

  • Scalability

  • Metals

  • Side-channel attacks

  • Homomorphic encryption

  • Federated Learning

  • Security

  • Privacy

  • Audio Event Detection

  • Acoustic Sensor Networks

  • Trustworthy AI

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