Fatigue Detection on Face Image Using FaceNet Algorithm and K-Nearest Neighbor Classifier

F. Adhinata, Diovianto Putra Rakhmadani, Danur Wijayanto
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引用次数: 11

Abstract

Background: The COVID-19 pandemic has made people spend more time on online meetings more than ever. The prolonged time looking at the monitor may cause fatigue, which can subsequently impact the mental and physical health. A fatigue detection system is needed to monitor the Internet users well-being. Previous research related to the fatigue detection system used a fuzzy system, but the accuracy was below 85%. In this research, machine learning is used to improve accuracy.Objective: This research examines the combination of the FaceNet algorithm with either k-nearest neighbor (K-NN) or multiclass support vector machine (SVM) to improve the accuracy.Methods: In this study, we used the UTA-RLDD dataset. The features used for fatigue detection come from the face, so the dataset is segmented using the Haar Cascades method, which is then resized. The feature extraction process uses FaceNet's pre-trained algorithm. The extracted features are classified into three classes—focused, unfocused, and fatigue—using the K-NN or multiclass SVM method.Results: The combination between the FaceNet algorithm and K-NN, with a value of  resulted in a better accuracy than the FaceNet algorithm with multiclass SVM with the polynomial kernel (at 94.68% and 89.87% respectively). The processing speed of both combinations of methods has allowed for real-time data processing.Conclusion: This research provides an overview of methods for early fatigue detection while working at the computer so that we can limit staring at the computer screen too long and switch places to maintain the health of our eyes. 
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基于FaceNet算法和k近邻分类器的人脸图像疲劳检测
背景:新冠肺炎大流行使人们比以往任何时候都花更多的时间在网上会议上。长时间盯着显示器可能会导致疲劳,从而影响身心健康。需要一个疲劳检测系统来监测互联网用户的健康状况。以往有关疲劳检测系统的研究均采用模糊系统,但准确率在85%以下。在这项研究中,机器学习被用来提高准确性。目的:研究FaceNet算法与k-最近邻(K-NN)或多类支持向量机(SVM)的结合,以提高准确率。方法:本研究采用UTA-RLDD数据集。用于疲劳检测的特征来自面部,因此使用Haar级联方法对数据集进行分割,然后调整大小。特征提取过程使用FaceNet的预训练算法。使用K-NN或多类支持向量机方法将提取的特征分为三类:聚焦、非聚焦和疲劳。结果:FaceNet算法与K-NN的组合,其值为,其准确率优于FaceNet算法与多项式核的多类SVM(分别为94.68%和89.87%)。两种方法组合的处理速度允许实时数据处理。结论:本研究概述了在电脑前工作时早期疲劳检测的方法,以便我们可以限制盯着电脑屏幕的时间过长,并更换位置以保持眼睛的健康。
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