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首页> 外文期刊>Affective Computing, IEEE Transactions on >The Role of Nonlinear Dynamics in Affective Valence and Arousal Recognition
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The Role of Nonlinear Dynamics in Affective Valence and Arousal Recognition

机译:非线性动力学在情感价和唤醒识别中的作用

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摘要

This paper reports on a new methodology for the automatic assessment of emotional responses. More specifically, emotions are elicited in agreement with a bidimensional spatial localization of affective states, that is, arousal and valence dimensions. A dedicated experimental protocol was designed and realized where specific affective states are suitably induced while three peripheral physiological signals, i.e., ElectroCardioGram (ECG), ElectroDermal Response (EDR), and ReSPiration activity (RSP), are simultaneously acquired. A group of 35 volunteers was presented with sets of images gathered from the International Affective Picture System (IAPS) having five levels of arousal and five levels of valence, including a neutral reference level in both. Standard methods as well as nonlinear dynamic techniques were used to extract sets of features from the collected signals. The goal of this paper is to implement an automatic multiclass arousal/valence classifier comparing performance when extracted features from nonlinear methods are used as an alternative to standard features. Results show that, when nonlinearly extracted features are used, the percentages of successful recognition dramatically increase. A good recognition accuracy (>90 percent) after 40-fold cross-validation steps for both arousal and valence classes was achieved by using the Quadratic Discriminant Classifier (QDC).
机译:本文报告了一种自动评估情绪反应的新方法。更具体地,与情感状态的二维空间局部一致,即唤醒和价维,引起情绪。设计并实现了专门的实验方案,其中可以适当地诱导特定的情感状态,同时同时获取三个外周生理信号,即心电图(ECG),皮肤电反应(EDR)和再呼吸活动(RSP)。向35名志愿者提供了一组从国际情感图片系统(IAPS)收集的图像,这些图像具有5种唤醒水平和5种化合价,其中包括两个参考水平。使用标准方法以及非线性动态技术从收集的信号中提取特征集。本文的目的是实现一种自动的多类唤醒/价分类器,用于比较从非线性方法中提取的特征代替标准特征时的性能。结果表明,使用非线性提取的特征时,成功识别的百分比急剧增加。通过使用二次判别分类器(QDC),在唤醒和价类的40倍交叉验证步骤之后,获得了良好的识别准确性(> 90%)。

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