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Forensic evidence reporting using GMM-UBM, JFA and I-vector methods: Application to Algerian Arabic dialect

机译:使用GMM-UBM,JFA和I-vector方法的法医证据报告:应用于阿尔及利亚阿拉伯方言

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Nowadays, under controlled conditions the speaker verification systems based on the GMM-UBM paradigm show very good performance. However, in forensic investigation activities the conditions; in which recordings are acquired; are uncontrollable, a naive use of the baseline GMM-UBM system without feature normalization, model transformation and score normalization techniques yields to unreliable forensic reporting. In this paper, we investigate forensic reporting using corpus-based likelihood ratio evaluation; which gained popularity in recent years; using two state-of-the-art speaker recognition systems: The JFA system which models explicitly the speaker and session variability during training stage and the I-vector paradigm which models the total variability and use compensation techniques to handle session mismatch. The GMM-UBM, Joint Factor Analysis and I-vector systems are compared in verification performance using Half Total Error Rates (HTER) and in forensic reporting using TIPPET plots. Experimental results on an Algerian Arabic dialect under different telephonic recording conditions confirm the robustness of I-vector and JFA systems in handling cross-channel mismatch and highlight clearly the drastic deterioration of the performance of the GMM-UBM system.
机译:如今,在可控条件下,基于GMM-UBM范例的说话者验证系统表现出非常好的性能。但是,在法医调查活动中,条件是;在其中获取录音;由于无法控制,天真地使用基线GMM-UBM系统而没有特征归一化,模型转换和分数归一化技术会导致不可靠的法医报告。在本文中,我们使用基于语料库的似然比评估研究法医报告;在最近几年流行起来;使用两个最先进的说话人识别系统:JFA系统,在训练阶段明确地对说话人和会话的可变性进行建模; I矢量范式,对总体可变性进行建模,并使用补偿技术来处理会话不匹配。使用半总错误率(HTER)比较GMM-UBM,联合因子分析和I向量系统的验证性能,并使用TIPPET图比较法医报告。在不同的电话录音条件下,阿尔及利亚阿拉伯方言的实验结果证实了I-vector和JFA系统在处理跨通道不匹配方面的鲁棒性,并清楚地表明了GMM-UBM系统性能的急剧下降。

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