Facial Expression Recognition Using Extreme Learning Machine

Serenada Salma Shafira, Nadya Ulfa, H. A. Wibawa, Rismiyati
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引用次数: 7

Abstract

Facial expression recognition is one of the technological capabilities in identifying a face image to follow up on research conducted by psychologists. The recognition of facial expressions is very important to know the emotions of someone who is experiencing it. In this study two datasets were used, namely the FER2013 and CK + datasets. The FER2013 dataset and CK+ are datasets designed to identify facial expressions. At the feature extraction stage, it uses the Histogram of Oriented Gradient (HOG) feature dan Local Binary Pattern (LBP) feature. Whereas in the classification stage, the Extreme Learning Machine (ELM) classifier is used. The greatest accuracy by using HOG feature is 63.86% for the FER2013 dataset and 99.79% for the CK + dataset with sigmoid as an activation function. And the greatest accuracy by using LBP feature is 55.11 % for the FER2013 dataset and 98.72% for the CK + dataset with RBF as an activation function.
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基于极限学习机的面部表情识别
面部表情识别是识别人脸图像的技术能力之一,是心理学家进行的研究的后续工作。面部表情的识别对于了解一个人的情绪是非常重要的。本研究使用FER2013和CK +两个数据集。FER2013数据集和CK+是用于识别面部表情的数据集。在特征提取阶段,采用了直方图定向梯度(HOG)特征和局部二值模式(LBP)特征。而在分类阶段,则使用极限学习机(ELM)分类器。以sigmoid为激活函数的FER2013数据集HOG特征的准确率最高,为63.86%,CK +数据集HOG特征的准确率为99.79%。使用RBF作为激活函数的FER2013数据集和CK +数据集使用LBP特征的准确率分别为55.11%和98.72%。
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