2023
DOI: 10.3991/ijoe.v19i11.40267
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Secure Data Computation Using Deep Learning and Homomorphic Encryption: A Survey

Abstract: Deep learning and its variant techniques have surpassed classical machine algorithms due to their high performance gaining remarkable results and are used in a broad range of applications. However, adopting deep learning models over the cloud introduces privacy and security issues for data owners and model owners, including computational inefficiency, expansion in ciphertext, error accumulation, security and usability trade-offs, and deep learning model attacks. With homomorphic encryption, computations on enc… Show more

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“…The authors from [16][17][18][19] discuss the framework, privacy-preserving techniques, and data security of cloud-based biometric traits. A method in [21] enhances template protection by utilizing NTRU homomorphic encryption and segregating the database and authentication server. It also includes an optimized decision-making strategy for identification and verification.…”
Section: Recognition Of Individuals Using Encrypted Biometric Featuresmentioning
confidence: 99%
“…The authors from [16][17][18][19] discuss the framework, privacy-preserving techniques, and data security of cloud-based biometric traits. A method in [21] enhances template protection by utilizing NTRU homomorphic encryption and segregating the database and authentication server. It also includes an optimized decision-making strategy for identification and verification.…”
Section: Recognition Of Individuals Using Encrypted Biometric Featuresmentioning
confidence: 99%