Dept. Electrical Engineering, Allied AI Biomedical Research Center, Southern Taiwan University of Science and Technology, Tainan 710, Taiwan.
Dept. Computer Science and Information Engineering, National Ilan University, Ilan 260, Taiwan.
Sensors (Basel). 2019 Apr 27;19(9):1974. doi: 10.3390/s19091974.
This study investigates combining the property of human vision system and a 2-phase data hiding strategy to improve the visual quality of data-embedded compressed images. The visual Internet of Things (IoT) is indispensable in smart cities, where different sources of visual data are collected for more efficient management. With the transmission through the public network, security issue becomes critical. Moreover, for the sake of increasing transmission efficiency, image compression is widely used. In order to respond to both needs, we present a novel data hiding scheme for image compression with Absolute Moment Block Truncation Coding (AMBTC). Embedding secure data in digital images has broad security uses, e.g., image authentication, prevention of forgery attacks, and intellectual property protection. The proposed method embeds data into an AMBTC block by two phases. In the intra-block embedding phase, a hidden function is proposed, where the five AMBTC parameters are extracted and manipulated to embed the secret data. In the inter-block embedding phase, the relevance of high mean and low mean values between adjacent blocks are exploited to embed additional secret data in a reversible way. Between these two embedding phases, a halftoning scheme called direct binary search is integrated to efficiently improve the image quality without changing the fixed parameters. The modulo operator is used for data extraction. The advantages of this study contain two aspects. First, data hiding is an essential area of research for increasing the IoT security. Second, hiding in compressed images instead of original images can improve the network transmission efficiency. The experimental results demonstrate the effectiveness and superiority of the proposed method.
本研究调查结合人类视觉系统的特性和两阶段数据隐藏策略,以提高数据嵌入压缩图像的视觉质量。视觉物联网(IoT)在智慧城市中是不可或缺的,在智慧城市中,收集不同来源的视觉数据以实现更高效的管理。随着通过公共网络的传输,安全性问题变得至关重要。此外,为了提高传输效率,广泛使用图像压缩。为了满足这两个需求,我们提出了一种新颖的数据隐藏方案,用于具有绝对矩块截断编码(AMBTC)的图像压缩。将安全数据嵌入数字图像具有广泛的安全用途,例如,图像认证、防止伪造攻击和知识产权保护。所提出的方法通过两个阶段将数据嵌入到 AMBTC 块中。在块内嵌入阶段,提出了一种隐藏函数,其中提取和操作五个 AMBTC 参数以嵌入秘密数据。在块间嵌入阶段,利用相邻块之间的高均值和低均值之间的相关性以可恢复的方式嵌入附加的秘密数据。在这两个嵌入阶段之间,集成了一种称为直接二进制搜索的半色调方案,以在不改变固定参数的情况下有效地提高图像质量。使用取模运算符进行数据提取。本研究的优点包含两个方面。首先,数据隐藏是增加物联网安全性的重要研究领域。其次,隐藏在压缩图像中而不是原始图像中可以提高网络传输效率。实验结果证明了所提出的方法的有效性和优越性。