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First Experiments to Detect Anomaly Using Personality Traits vs. Prosodic Features

机译:使用人格特征检测异常的第一次实验与韵律特征

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This paper presents the design of an anomaly detector based on three different sets of features, one corresponding to some prosodic descriptors and two extracted from Big Five traits. Big Five traits correspond to a simple but efficient representation of a human personality. They are extracted from a manual annotation while prosodic features are extracted directly from the speech signal. We evaluate two different anomaly detection methods: One-Class SVM (OC-SVM) and iForest, each one combined with a threshold classification to decide the "normality" of a sample. The different combinations of models and feature sets are evaluated on the SSPNET-Personality corpus which has already been used in several experiments, including a previous work on separating two types of personality profiles in a supervised way. In this work, we propose the above mentioned unsupervised methods, and discuss their performance, to detect particular audio-clips produced by a speaker with an abnormal personality. Results show that using automatically extracted prosodic features competes with the Big Five traits. In our case, OC-SVM seems to get better results than iForest.
机译:本文介绍了基于三组不同特征的异常探测器的设计,对应于一些韵律描述符和从大五个特征提取的两个。大五个特征对应于人类人格的简单但有效的代表。它们从手动注释中提取,而韵律特征直接从语音信号提取。我们评估了两种不同的异常检测方法:单级SVM(OC-SVM)和IFOREST,每个单位,每个单独的组合与阈值分类来决定样本的“正常性”。模型和特征集的不同组合在SSPNet - 个性语料库中进行了评估,这些语料库已经用于多个实验,包括以先前的方式以监督方式分离两种人格型材。在这项工作中,我们提出了上述无监督的方法,并讨论其性能,以检测具有异常个性的扬声器产生的特定音频剪辑。结果表明,使用自动提取的韵律特征与大五个特征竞争。在我们的情况下,OC-SVM似乎比IFOREST获得更好的结果。

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