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Privacy-Preserving Deep Learning Using Deformable Operators for Secure Task Learning | IEEE Conference Publication | IEEE Xplore

Privacy-Preserving Deep Learning Using Deformable Operators for Secure Task Learning


Abstract:

In the era of cloud computing and data-driven applications, it is crucial to protect sensitive information to maintain data privacy, ensuring truly reliable systems. As a...Show More

Abstract:

In the era of cloud computing and data-driven applications, it is crucial to protect sensitive information to maintain data privacy, ensuring truly reliable systems. As a result, preserving privacy in deep learning systems has become a critical concern. Existing methods for privacy preservation rely on image encryption or perceptual transformation approaches. However, they often suffer from reduced task performance and high computational costs. To address these challenges, we propose a novel Privacy-Preserving framework that uses a set of deformable operators for secure task learning. Our method involves shuffling pixels during the analog-to-digital conversion process to generate visually protected data. Those are then fed into a well-known network enhanced with deformable operators. Using our approach, users can achieve equivalent performance to original images without additional training using a secret key. Moreover, our method enables access control against unauthorized users. Experimental results demonstrate the efficacy of our approach, showcasing its potential in cloud-based scenarios and privacy-sensitive applications.
Date of Conference: 14-19 April 2024
Date Added to IEEE Xplore: 18 March 2024
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Conference Location: Seoul, Korea, Republic of

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