一种基于自适应增强的愤怒识别与评估系统

Palac Chhabra, Garima Vyas, Joyjit Chatterjee, Sven-Hendrik Voss
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引用次数: 2

摘要

本文提出了一种从言语话语中识别和评估不同程度愤怒的方法。与现有的仅从语音中检测情感的方法不同,该方法不仅可以检测情感,还可以标记情感的水平。从每个音频片段中提取了一个75维特征向量,用于训练和测试。分类和评估采用自适应增强算法。实验是在7种情绪的数据集上进行的。231个音频片段用于训练,100个用于测试。该系统检测“愤怒”情绪的准确率为78.3%。所有的愤怒片段被分为低、中、高水平的愤怒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic System for Recognition and Assessment of Anger Using Adaptive Boost
This paper proposes a method to identify and assess different levels of anger from the speech utterances. Unlike the existing methods which only detect the emotion from speech, the proposed method not only detects but also labels the level of an emotion. A 75 dimensional feature vector has been extracted from each audio clip and is used for training and testing. For classification and assessment the adaptive boosting algorithm is used. Experiments were performed on a dataset of seven emotions. 231 audio clips were used for training and 100 were used for testing. The accuracy of the proposed system to detect 'Angry' emotion is 78.3%. All the angry clips are classified into low, medium and high level of anger.
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