基于多最小二乘双支持向量机的情感检测系统

Divya Tomar, Divya Ojha, Sonali Agarwal
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引用次数: 13

摘要

创伤后应激障碍(PTSD)、双相躁狂障碍(BMD)、强迫症(OCD)、抑郁症和自杀是军民生活中存在的一些主要问题。情绪的变化是引起这类疾病的原因。因此,开发一种鲁棒可靠、适合于实际应用的情感检测系统至关重要。除了医疗保健之外,随着口语界面在人机交互应用中的作用越来越大,从人类语言中自动识别情绪的重要性也越来越大。语言中的情绪检测可以应用于各种情况,以将有限的人力资源分配给具有最高痛苦或需求的客户,例如在自动呼叫中心或养老院。在本文中,我们使用了一个新颖的多最小二乘双支持向量机分类器来检测七种不同的情绪,如愤怒、快乐、悲伤、焦虑、厌恶、恐慌和中性情绪。实验结果表明,该方法比现有的方法具有更好的性能。结果表明,所建立的情绪检测系统可用于心理状态的筛查。
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An Emotion Detection System Based on Multi Least Squares Twin Support Vector Machine
Posttraumatic stress disorder (PTSD), bipolar manic disorder (BMD), obsessive compulsive disorder (OCD), depression, and suicide are some major problems existing in civilian and military life. The change in emotion is responsible for such type of diseases. So, it is essential to develop a robust and reliable emotion detection system which is suitable for real world applications. Apart from healthcare, importance of automatically recognizing emotions from human speech has grown with the increasing role of spoken language interfaces in human-computer interaction applications. Detection of emotion in speech can be applied in a variety of situations to allocate limited human resources to clients with the highest levels of distress or need, such as in automated call centers or in a nursing home. In this paper, we used a novelmulti least squares twin support vector machine classifier in order to detect seven different emotions such as anger, happiness, sadness, anxiety, disgust, panic, and neutral emotions. The experimental result indicates better performance of the proposed technique over other existing approaches. The result suggests that the proposed emotion detection system may be used for screening of mental status.
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