Active research is going on to securely transmit a secret message or so-called steganography by using data-hiding techniques in digital images. After assessing the state-of-the-art research work, we found, most of the existing solutions are not promising and are ineffective against machine learning-based steganalysis. In this paper, a lightweight steganography scheme is presented through graphical key embedding and obfuscation of data through encryption. By keeping a mindset of industrial applicability, to show the effectiveness of the proposed scheme, we emphasized mainly deep learning-based steganalysis. The proposed steganography algorithm containing two schemes withstands not only statistical pattern recognizers but also machine learning steganalysis through feature extraction using a well-known pre-trained deep learning network Xception. We provided a detailed protocol of the algorithm for different scenarios and implementation details. Furthermore, different performance metrics are also evaluated with statistical and machine learning performance analysis. The results were quite impressive with respect to the state of the arts. We received 2.55% accuracy through statistical steganalysis and machine learning steganalysis gave maximum of 49.93~50% correctly classified instances in good condition.
翻译:通过在数字图像中使用数据隐藏技术来安全传递秘密信息或所谓的线性学,我们发现,大多数现有解决方案对基于机器学习的分流分析没有希望,而且对机器学习的分流分析没有效果。在本文中,通过图形键嵌入和通过加密模糊数据的方式,提出了一个轻量的分层法计划。为了显示拟议的计划的有效性,我们强调工业应用思维,主要是深层次的基于学习的分流分析。拟议的包含两种方案的分流算法不仅能经受住统计模式识别器,而且还能通过利用众所周知的、事先受过训练的深层次学习网络Xception进行特征提取学习。我们为不同的情景和执行细节提供了详细的算法协议。此外,还用统计和机器学习性能分析来评价不同的性能指标。在艺术状况方面,我们通过统计学分析和机器学习的分流分析获得了2.55%的准确度。我们通过统计学分解和机器学分流分析获得了49.93%至50%的高度准确分类案例。