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A personalized emotion recognition system using an unsupervised feature adaptation scheme

机译:使用无监督特征自适应方案的个性化情绪识别系统

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A personalized emotion recognition system aims to tune the model to recognize the expressive behaviors of a targeted person. Such a system can play an important role in various domains including call center and health care applications. Adapting any general emotion recognition system for a particular individual requires speech samples and prior knowledge about their emotional content. These assumptions constrain the use of these techniques in many real scenarios in which no annotated data is available to train or adapt the models. To address this problem, this paper introduces an unsupervised feature adaptation scheme that aims to reduce the mismatch between the acoustic features used to train the system and the acoustic features extracted from the unknown targeted speaker. The adaptation scheme uses our recently proposed iterative feature normalization (IFN) framework. An emotion detection system is trained with the IEMOCAP database. For testing, a database was created by downloading videos from a video-sharing website, containing various interviews from a targeted subject (1.5 hours). The detection system is used to identify emotional speech with and without the proposed feature adaptation scheme. The experimental results indicate that the proposed approach improves the unweighted accuracy from 50.8% to 70.0%.
机译:个性化的情绪识别系统旨在调整模型以识别目标人员的表现行为。这样的系统可以在包括呼叫中心和医疗保健应用在内的各个领域中发挥重要作用。使任何通用的情绪识别系统适应特定的个体都需要语音样本和有关他们的情绪内容的先验知识。这些假设限制了在没有注释数据可用于训练或调整模型的许多实际场景中使用这些技术。为了解决这个问题,本文引入了一种无监督的特征自适应方案,旨在减少用于训练系统的声学特征与从未知目标说话者提取的声学特征之间的失配。适应方案使用了我们最近提出的迭代特征归一化(IFN)框架。情绪检测系统使用IEMOCAP数据库进行训练。为了进行测试,通过从视频共享网站下载视频来创建数据库,其中包含来自目标主题的各种采访(1.5小时)。该检测系统用于识别有无建议的特征自适应方案的情感语音。实验结果表明,该方法将未加权精度从50.8%提高到70.0%。

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