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An Evaluation of Entropy Measures for Microphone Identification

机译:麦克风识别熵措施的评价

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摘要

Research findings have shown that microphones can be uniquely identified by audio recordings since physical features of the microphone components leave repeatable and distinguishable traces on the audio stream. This property can be exploited in security applications to perform the identification of a mobile phone through the built-in microphone. The problem is to determine an accurate but also efficient representation of the physical characteristics, which is not known a priori. Usually there is a trade-off between the identification accuracy and the time requested to perform the classification. Various approaches have been used in literature to deal with it, ranging from the application of handcrafted statistical features to the recent application of deep learning techniques. This paper evaluates the application of different entropy measures (Shannon Entropy, Permutation Entropy, Dispersion Entropy, Approximate Entropy, Sample Entropy, and Fuzzy Entropy) and their suitability for microphone classification. The analysis is validated against an experimental dataset of built-in microphones of 34 mobile phones, stimulated by three different audio signals. The findings show that selected entropy measures can provide a very high identification accuracy in comparison to other statistical features and that they can be robust against the presence of noise. This paper performs an extensive analysis based on filter features selection methods to identify the most discriminating entropy measures and the related hyper-parameters (e.g., embedding dimension). Results on the trade-off between accuracy and classification time are also presented.
机译:研究结果表明,由于麦克风组件的物理特征在音频流上留下可重复和可区分的迹线,因此可以通过音频记录唯一地识别麦克风。此属性可以在安全应用程序中利用,以通过内置麦克风来执行手机的标识。问题是确定对物理特性的准确而有效的表示,这是不知道的。通常在识别准确性和请求执行分类的时间之间存在权衡。在文献中使用了各种方法来处理它,从手工统计特征的应用范围到最近的深度学习技术应用。本文评估了不同熵措施的应用(香农熵,排列熵,分散熵,近似熵,样品熵和模糊熵)及其对麦克风分类的适用性。该分析针对34个手机的内置麦克风的实验数据集进行了验证,由三种不同的音频信号刺激。结果表明,与其他统计特征相比,所选择的熵措施可以提供非常高的识别精度,并且它们可以抵抗噪音的存在。本文根据滤波器特征选择方法进行广泛的分析,以识别最具鉴别的熵措施和相关的超参数(例如,嵌入维度)。结果还提出了在准确性和分类时间之间进行权衡。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2020(22),11
  • 年度 2020
  • 页码 1235
  • 总页数 30
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:安全;识别;身份验证;信号处理;

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