Synthetic image learning: Preserving performance and preventing Membership Inference Attacks

IF 3.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pattern Recognition Letters Pub Date : 2025-02-08 DOI:10.1016/j.patrec.2025.02.003
Eugenio Lomurno, Matteo Matteucci
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Abstract

Generative artificial intelligence has transformed the generation of synthetic data, providing innovative solutions to challenges like data scarcity and privacy, which are particularly critical in fields such as medicine. However, the effective use of this synthetic data to train high-performance models remains a significant challenge. This paper addresses this issue by introducing Knowledge Recycling (KR), a pipeline designed to optimise the generation and use of synthetic data for training downstream classifiers. At the heart of this pipeline is Generative Knowledge Distillation, the proposed technique that significantly improves the quality and usefulness of the information provided to classifiers through a synthetic dataset regeneration and soft labelling mechanism. The KR pipeline has been tested on a variety of datasets, with a focus on six highly heterogeneous medical image datasets, ranging from retinal images to organ scans. The results show a significant reduction in the performance gap between models trained on real and synthetic data, with models based on synthetic data outperforming those trained on real data in some cases. Furthermore, the resulting models show almost complete immunity to Membership Inference Attacks, manifesting privacy properties missing in models trained with conventional techniques.

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合成图像学习:保持性能和防止成员推理攻击
生成式人工智能改变了合成数据的生成,为数据稀缺和隐私等挑战提供了创新的解决方案,这在医学等领域尤为重要。然而,有效地利用这些合成数据来训练高性能模型仍然是一个重大挑战。本文通过引入知识回收(KR)来解决这个问题,知识回收是一种管道,旨在优化生成和使用合成数据来训练下游分类器。该管道的核心是生成知识蒸馏,该技术通过合成数据集再生和软标记机制显着提高了提供给分类器的信息的质量和有用性。KR管道已经在各种数据集上进行了测试,重点是六个高度异构的医学图像数据集,范围从视网膜图像到器官扫描。结果表明,在真实数据和合成数据上训练的模型之间的性能差距显著减小,在某些情况下,基于合成数据的模型的性能优于基于真实数据训练的模型。此外,所得到的模型对成员推理攻击几乎完全免疫,表现出用传统技术训练的模型所缺少的隐私属性。
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来源期刊
Pattern Recognition Letters
Pattern Recognition Letters 工程技术-计算机:人工智能
CiteScore
12.40
自引率
5.90%
发文量
287
审稿时长
9.1 months
期刊介绍: Pattern Recognition Letters aims at rapid publication of concise articles of a broad interest in pattern recognition. Subject areas include all the current fields of interest represented by the Technical Committees of the International Association of Pattern Recognition, and other developing themes involving learning and recognition.
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