cs.AI updates on arXiv.org 08月05日
HoneyImage: Verifiable, Harmless, and Stealthy Dataset Ownership Verification for Image Models
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本文提出了一种名为HoneyImage的新方法,用于图像识别模型中的数据集所有权验证。该方法通过在少量样本中嵌入不可察觉的验证痕迹,实现可靠的所有权验证,同时保持数据集完整性。

arXiv:2508.00892v1 Announce Type: cross Abstract: Image-based AI models are increasingly deployed across a wide range of domains, including healthcare, security, and consumer applications. However, many image datasets carry sensitive or proprietary content, raising critical concerns about unauthorized data usage. Data owners therefore need reliable mechanisms to verify whether their proprietary data has been misused to train third-party models. Existing solutions, such as backdoor watermarking and membership inference, face inherent trade-offs between verification effectiveness and preservation of data integrity. In this work, we propose HoneyImage, a novel method for dataset ownership verification in image recognition models. HoneyImage selectively modifies a small number of hard samples to embed imperceptible yet verifiable traces, enabling reliable ownership verification while maintaining dataset integrity. Extensive experiments across four benchmark datasets and multiple model architectures show that HoneyImage consistently achieves strong verification accuracy with minimal impact on downstream performance while maintaining imperceptible. The proposed HoneyImage method could provide data owners with a practical mechanism to protect ownership over valuable image datasets, encouraging safe sharing and unlocking the full transformative potential of data-driven AI.

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相关标签

图像识别 数据集所有权 HoneyImage 数据验证 数据完整性
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