The advancement of secure communication and identity verification fields has significantly increased through the use of deep learning techniques for data hiding. By embedding information into a noise-tolerant signal such as audio, video, or images, digital watermarking and steganography techniques can be used to protect sensitive intellectual property and enable confidential communication, ensuring that the information embedded is only accessible to authorized parties. This survey provides an overview of recent developments in deep learning techniques deployed for data hiding, categorized systematically according to model architectures and noise injection methods. The objective functions, evaluation metrics, and datasets used for training these data hiding models are comprehensively summarised. Additionally, potential future research directions that unite digital watermarking and steganography on software engineering to enhance security and mitigate risks are suggested and deliberated. This contribution furthers the creation of a more trustworthy digital world and advances Responsible AI.
翻译:随着深度学习技术在数据隐藏领域的运用,数字水印和隐写术技术的使用显著增加,将信息嵌入到噪声容忍信号(例如音频,视频或图像)中,以保护敏感的知识产权,实现机密通信,确保只有授权方才能访问嵌入的信息。本文按照模型架构和噪声注入方法的分类系统提供了最近深度学习技术在数据隐藏方面的发展概述。全面概括了用于训练这些数据隐藏模型的目标函数,评估指标和数据集。此外,提出并讨论了将数字水印和隐写术在软件工程领域统一起来以增强安全性并降低风险的潜在未来研究方向。这项贡献推动了创建更值得信赖的数字世界,推进了负责任的人工智能。