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Improvement of Information Fusion Based Audio Steganalysis

机译:基于信息融合的音频隐写分析的改进

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In the paper we extend an existing information fusion based audio steganalysis approach by three different kinds of evaluations: The first evaluation addresses the so far neglected evaluations on sensor level fusion. Our results show that this fusion removes content dependability while being capable of achieving similar classification rates (especially for the considered global features) if compared to single classifiers on the three exemplarily tested audio data hiding algorithms. The second evaluation enhances the observations on fusion from considering only segmental features to combinations of segmental and global features, with the result of a reduction of the required computational complexity for testing by about two magnitudes while maintaining the same degree of accuracy.rnThe third evaluation tries to build a basis for estimating the plausibility of the introduced steganalysis approach by measuring the sensibility of the models used in supervised classification of steganographic material against typical signal modification operations like de-noising or 128kBit/s MP3 encoding. Our results show that for some of the tested classifiers the probability of false alarms rises dramatically after such modifications.
机译:在本文中,我们通过三种不同的评估方法扩展了现有的基于信息融合的音频隐写分析方法:第一种评估方法解决了迄今为止在传感器水平融合方面被忽视的评估方法。我们的结果表明,与三种示例性测试音频数据隐藏算法上的单个分类器相比,这种融合消除了内容的依赖性,同时能够实现相似的分类率(尤其是对于考虑的全局特征)。第二次评估增强了对融合的观察,从仅考虑分段特征到分段特征与整体特征的组合,结果将测试所需的计算复杂度降低了大约两个数量级,同时保持了相同的准确性。rn通过测量隐写材料监督分类中使用的模型相对于典型信号修改操作(例如降噪或128kBit / s MP3编码)的敏感性,为估算引入的隐写分析方法的合理性奠定基础。我们的结果表明,对于某些经过测试的分类器,在进行此类修改后,误报的可能性急剧上升。

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