基于极限学习机的人类情感识别框架

Prasetia Utama, Widodo, Hamidillah Ajie
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引用次数: 2

摘要

人类情感识别一直是人机交互领域的一个具有挑战性的问题。为了在人与计算机之间形成一种更自然的交互,计算机应该能够识别并响应人类的情感。本文提出了一种识别人类情感的方法。该方法利用haar分类器检测人脸的嘴、眼睛和眉毛,并利用Gabor小波提取特征。在对特征进行分类之前,先进行PCA降维。该框架采用带ELM的slfn作为学习算法对特征进行分类。在本实验中,10名被试分别表达了6种基本情绪和神经状态,并对所提出的框架进行了个性化和泛化两种情况下的测试。通过与K-NN和SVM的比较,对ELM的鲁棒性进行了评价。初步实验表明,该方法在人脸个性化方面具有良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework of human emotion recognition using extreme learning machine
Human emotion recognition has been challenging issue in field of human-computer interaction. In order to form an interaction that is more natural between human and com-puter, the computer should be able to discern and respond to human emotion. In this paper, an approach for recognizing human emotion is proposed. The proposed approach operates HAAR-classifier to detect mouth, eyes, and eyebrow on face, and, to extract features from them, it uses Gabor wavelet. Before classifying the features, PCA is performed to reduce its dimension. The proposed framework employs SLFNs with ELM as its learning algorithm to classify the features. In this experimental, the proposed framework is tested in two cases, personalize and generalize face case, with ten subjects expressing six basic emotions and neural state. The robustness of ELM is evaluated with comparing it to K-NN and SVM. Preliminary experiment shows that the proposed approach has promising performance in personalize face case.
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