基于音频质量度量的音频隐写分析进化GA分类器

S. Geetha, S.S. Sivatha Sindhu, S. Gobi, A. Kannan
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引用次数: 4

摘要

区分异常音频文件(Stego音频)和纯音频文件(cover音频)是困难和繁琐的。隐写分析技术努力检测音频是否包含隐藏信息。本文提出了一种基于遗传算法的音频隐写分析方法,并给出了该方法的软件实现。基本的想法是,在掩蔽音频信号和隐去音频信号上计算的各种音频质量指标,相对于它们的去噪版本,在统计上是不同的。利用这些音频质量指标,采用遗传算法从音频数据中推导出一组分类规则,并使用适应度函数来判断每条规则的质量。然后使用生成的规则在实时环境中检测或分类音频文档。与大多数现有的基于遗传算法的方法不同,由于规则的简单表示和有效的适应度函数,该方法更容易实现,同时提供了灵活性,可以普遍检测任何新的隐写技术。基于遗传算法的音频隐写分析仪的实现依赖于这些音频质量指标的选择和两类分类器的构建,该分类器将区分掺假和未接触的音频样本。实验结果表明,该方法具有良好的检测率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving GA Classifiler for Audio Steganalysis based on Audio Quality Metrics
Differentiating anomalous audio document (Stego audio) from pure audio document (cover audio) is difficult and tedious. Steganalytic techniques strive to detect whether an audio contains a hidden message or not. This paper presents a genetic algorithm (GA) based approach to audio steganalysis, and the software implementation of the approach. The basic idea is that, the various audio quality metrics calculated on cover audio signals and on stego-audio signals vis-a-vis their denoised versions, are statistically different. GA is employed to derive a set of classification rules from audio data using these audio quality metrics, and fitness function is used to judge the quality of each rule. The generated rules are then used to detect or classify the audio documents in a real-time environment. Unlike most existing GA-based approaches, because of the simple representation of rules and the effective fitness function, the proposed method is easier to implement while providing the flexibility to generally detect any new steganography technique. The implementation of the GA based audio steganalyzer relies on the choice of these audio quality metrics and the construction of a two-class classifier, which will discriminate between the adulterated and the untouched audio samples. Experimental results show that the proposed technique provides promising detection rates.
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