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Blind source computer device identification from recorded VoIP calls for forensic investigation

机译:盲源计算机设备从录制的VoIP呼吁识别法医调查

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devices from recorded VoIP call may help the forensic investigator to reveal useful information. It also proves the authenticity of the call recording submitted to the court as evidence. This paper extended the previous study on the use of recorded VoIP call for blind source computer device identification. Although initial results were promising but theoretical reasoning for this is yet to be found. The study suggested computing entropy of mel-frequency cepstrum coefficients (entropy-MFCC) from near-silent segments as an intrinsic feature set that captures the device response function due to the tolerances in the electronic components of individual computer devices. By applying the supervised learning techniques of naive Bayesian, linear logistic regression, neural networks and support vector machines to the entropy-MFCC features, state-of-the-art identification accuracy of near 99.9% has been achieved on different sets of computer devices for both call recording and microphone recording scenarios. Furthermore, unsupervised learning techniques, including simple k-means, expectation-maximization and density-based spatial clustering of applications with noise (DBSCAN) provided promising results for call recording dataset by assigning the majority of instances to their correct clusters. (C) 2017 Elsevier Ireland Ltd. All rights reserved.
机译:录制VoIP呼叫的设备可以帮助法医调查仪揭示有用的信息。它还证明了向法院提交的通话记录的真实性作为证据。本文扩展了先前关于使用记录的VoIP呼叫进行盲源计算机设备识别的研究。虽然初步结果很有希望,但尚未找到迄今为止的理论推理。该研究建议从近静音段计算莫尔频谱系数(熵-MFCC)作为固有特征集的熵,该内部特征集由于各个计算机设备的电子元件中的公差而捕获设备响应功能。通过应用Naive Bayesian,线性逻辑回归,神经网络和支持向量机的监督学习技巧,对熵-MFCC特征,在不同的计算机设备上实现了近99.9%的最先进的识别精度呼叫记录和麦克风录制方案。此外,无监督的学习技术,包括简单的K-means,期望最大化和基于密度的基于噪声的空间聚类(DBSCAN),通过将大多数实例分配给其正确的集群来提供对呼叫记录数据集的有希望的结果。 (c)2017 Elsevier Ireland Ltd.保留所有权利。

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