StegoBreaker: Audio Steganalysis using Ensemble Autonomous Multi-Agent and Genetic Algorithm

S. Geetha, S.S. Sivatha Sindhu, A. Kannan
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引用次数: 9

Abstract

The goal of steganography is to avoid drawing suspicion to the transmission of a hidden message in multi-medium. This creates a potential problem when this technology is misused for planning criminal activities. 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 investigates the use of genetic algorithm (GA) to aid autonomous intelligent software agents capable of detecting any hidden information in audio files, automatically. This agent would make up the detection agent in an architecture comprising of several different agents that collaborate together to detect the hidden information. The basic idea is that, the various audio quality metrics (AQMs) calculated on cover audio signals and on stego-audio signals vis-a-vis their denoised versions, are statistically different. GA employs these AQMs to steganalyse the audio data. The overall agent architecture will operate as an automatic target detection (ATD) system. The architecture of ATD system is presented in this paper and it is shown how the detection agent fits into the overall system. The design of ATD based audio steganalyzer relies on the choice of these audio quality measures and the construction of a GA based rule generator, which spawns a set of rules that discriminates between the adulterated and the untouched audio samples. Experimental results show that the proposed technique provides promising detection rates
使用集成自治多智能体和遗传算法的音频隐写分析
隐写术的目的是避免对隐藏信息在多媒体中的传输产生怀疑。当这项技术被滥用于策划犯罪活动时,就会产生一个潜在的问题。区分异常音频文件(暗语音频)和纯音频文件(封面音频)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。本文研究了使用遗传算法(GA)来帮助自主智能软件代理自动检测音频文件中的任何隐藏信息。该代理将在由几个不同的代理组成的体系结构中构成检测代理,这些代理相互协作以检测隐藏信息。基本的想法是,各种音频质量指标(aqm)在掩蔽音频信号和隐去音频信号上计算,相对于它们的去噪版本,在统计上是不同的。遗传算法利用这些AQMs对音频数据进行隐写。整个代理体系结构将作为一个自动目标检测(ATD)系统运行。本文介绍了ATD系统的体系结构,并说明了检测代理如何适应整个系统。基于ATD的音频隐写分析仪的设计依赖于这些音频质量度量的选择和基于遗传算法的规则生成器的构建,该规则生成器生成一组区分掺假和未掺假音频样本的规则。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。
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