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DeepEclipse: Breaking White-Box DNN-Watermarking Schemes


핵심 개념
The author proposes DeepEclipse as a novel framework to remove white-box watermarks, evading detection without prior knowledge of the watermarking scheme or additional data.
초록

Deep Learning models face threats from model embezzlement and unauthorized usage, leading to the development of watermarking schemes. DeepEclipse offers obfuscation techniques for breaking white-box DNN watermarks, ensuring model ownership verification. The approach targets Linear and Convolutional layers, providing base and advanced obfuscation methods to counter passive and active verifiers. By altering layer structures and weights while maintaining model utility, DeepEclipse effectively breaks multiple watermarking schemes with minimal impact on accuracy.

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통계
Different watermarking techniques developed for DNN protection. White-box watermarking involves modifying weights with unique signatures. Attacks on white-box watermarking require knowledge of specific schemes or access to underlying data. DeepEclipse excels in breaking multiple white-box watermarking schemes without prior knowledge or additional training. Evaluation shows reduced watermark detection to random guessing while maintaining model accuracy.
인용구
"We propose DeepEclipse, a novel and unified framework designed to remove white-box watermarks." "Our evaluation reveals that DeepEclipse excels in breaking multiple white-box watermarking schemes."

핵심 통찰 요약

by Alessandro P... 게시일 arxiv.org 03-07-2024

https://arxiv.org/pdf/2403.03590.pdf
DeepEclipse

더 깊은 질문

How can the industry adapt to protect intellectual property rights in the era of deep learning models

In the era of deep learning models, the industry can adapt to protect intellectual property rights by implementing robust security measures and innovative techniques. One approach is to develop advanced watermarking schemes that are resistant to removal attacks like DeepEclipse. These schemes should focus on enhancing reliability, robustness, and security while minimizing false positives and negatives in watermark detection. Additionally, incorporating encryption methods to safeguard model architectures and parameters can add an extra layer of protection against unauthorized access or tampering. Furthermore, establishing clear legal frameworks and regulations around intellectual property rights for AI models is crucial. Companies should enforce strict policies regarding data access, model training procedures, and ownership rights. By ensuring transparency in collaborations, licensing agreements, and data sharing practices within the industry, organizations can mitigate the risk of IP infringement. Collaboration between academia, industry experts, legal professionals, and policymakers is essential to address emerging challenges in protecting IP rights for deep learning models effectively. By fostering a multidisciplinary approach towards developing secure AI technologies and promoting ethical standards in AI research and development processes, the industry can create a more sustainable ecosystem for innovation while safeguarding intellectual property assets.

What are potential drawbacks or ethical concerns associated with removing watermarks from DNNs

Removing watermarks from DNNs raises significant ethical concerns related to copyright infringement, plagiarism issues, and misappropriation of intellectual property. Some potential drawbacks associated with this practice include: Violation of Ownership Rights: Removing watermarks from DNNs without authorization infringes upon the rightful owner's ownership rights over their intellectual creations. Loss of Attribution: Watermarks serve as a means of attributing credit to the original creators or owners of DNN models. Removing these marks erases valuable information about authorship or ownership. Misuse of Models: Unlawfully removing watermarks enables malicious actors to misuse DNN models for unethical purposes, such as spreading misinformation or conducting illicit activities without being traced back to the original creators. Legal Implications: Engaging in activities that involve removing watermarks from DNNs may lead to legal consequences, including lawsuits for copyright infringement or breach of intellectual property laws. Impact on Trust: The act of removing watermarks undermines trust within the AI community by promoting dishonest practices that devalue integrity and authenticity in model development.

How might advancements in AI impact the future landscape of digital content protection

Advancements in AI are poised to revolutionize digital content protection by introducing sophisticated tools powered by machine learning algorithms capable of detecting unauthorized use or distribution patterns across various platforms: 1- Enhanced Content Recognition: AI-driven solutions will enable more accurate identification of copyrighted material through pattern recognition algorithms that analyze audiovisual content attributes like fingerprints or metadata signatures. 2- Automated Copyright Enforcement: AI systems can automate copyright enforcement processes by scanning vast amounts of online content rapidly to detect instances where protected materials are used without permission. 3- Dynamic Watermarking Techniques: Advanced AI algorithms will facilitate dynamic watermarking strategies that embed imperceptible markers into digital content at scale, making it harder for unauthorized users to remove them effectively. 4- Behavioral Analysis Tools: AI-powered behavioral analysis tools will track user interactions with digital content to identify suspicious patterns indicative of piracy or unauthorized distribution channels 5- -Digital Rights Management (DRM) Solutions: Leveraging artificial intelligence capabilities, organizations can implement DRM solutions that dynamically adjust access controls based on user behavior and license agreements—enhancing overall security measures while preserving user experience quality.
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