Speech privacy-preserving methods using secret key for convolutional neural network models and their robustness evaluation
In this paper, we propose privacy-preserving methods with a secret key for convolutional neural network (CNN)-based models in speech processing tasks. In environments where untrusted third parties, like cloud servers, provide CNN-based systems, ensuring the privacy of speech queries becomes essentia...
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Zusammenfassung: | In this paper, we propose privacy-preserving methods with a secret key for
convolutional neural network (CNN)-based models in speech processing tasks. In
environments where untrusted third parties, like cloud servers, provide
CNN-based systems, ensuring the privacy of speech queries becomes essential.
This paper proposes encryption methods for speech queries using secret keys and
a model structure that allows for encrypted queries to be accepted without
decryption. Our approach introduces three types of secret keys: Shuffling,
Flipping, and random orthogonal matrix (ROM). In experiments, we demonstrate
that when the proposed methods are used with the correct key, identification
performance did not degrade. Conversely, when an incorrect key is used, the
performance significantly decreased. Particularly, with the use of ROM, we show
that even with a relatively small key space, high privacy-preserving
performance can be maintained many speech processing tasks. Furthermore, we
also demonstrate the difficulty of recovering original speech from encrypted
queries in various robustness evaluations. |
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DOI: | 10.48550/arxiv.2408.03897 |