Recoverable Privacy-Preserving Image Classification through Noise-like Adversarial Examples
Jun Liu, Jiantao Zhou, Jinyu Tian, Weiwei Sun

TL;DR
This paper introduces a privacy-preserving image classification method that encrypts images with noise-like adversarial examples, allowing classification without retraining and high-fidelity image recovery, ensuring data privacy and utility.
Contribution
The proposed scheme enables classification of encrypted images using plaintext-trained classifiers and allows high-quality image recovery, without retraining classifiers or compromising privacy.
Findings
Classification accuracy remains consistent in encrypted and plaintext domains.
Encrypted images can be recovered with PSNR over 48 dB.
The system generalizes well across different datasets.
Abstract
With the increasing prevalence of cloud computing platforms, ensuring data privacy during the cloud-based image related services such as classification has become crucial. In this study, we propose a novel privacypreserving image classification scheme that enables the direct application of classifiers trained in the plaintext domain to classify encrypted images, without the need of retraining a dedicated classifier. Moreover, encrypted images can be decrypted back into their original form with high fidelity (recoverable) using a secret key. Specifically, our proposed scheme involves utilizing a feature extractor and an encoder to mask the plaintext image through a newly designed Noise-like Adversarial Example (NAE). Such an NAE not only introduces a noise-like visual appearance to the encrypted image but also compels the target classifier to predict the ciphertext as the same label as…
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Taxonomy
TopicsDigital Media Forensic Detection · Chaos-based Image/Signal Encryption · Adversarial Robustness in Machine Learning
