Detecting Face Expressions in Real-Time Using Convolutional Neural Network (CNN) Algorithm

None Muhammad Haris Irham, None Abdul Mubarak, None Munazat Salmin, None Rosihan
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Abstract

This research discusses the use of a Convolutional Neural Network (CNN) with the MobileNetV2 model in the real-time detection of human facial expressions. This research aims to develop a human face expression detection system using deep learning algorithms. This study used the observation data collection method and obtained secondary data from the FER2013 data set which contains 28,709 training samples, 3,859 validation data sets, and 3,859 test samples, for a total of 35,887 images with a resolution of 48x48 and seven categories of facial expressions. The training results showed that the CNN model using MobileNetV2 achieved an accuracy of 57% in the training process and 51% in the validation process. Based on the analysis of these results, testing using a confusion matrix with an accuracy of 51% concluded that the model was unable to properly recognize patterns of data with disgust and fear categories, leading to low accuracy. Some factors contributing to the system's inability to recognize expressions were due to similarities between facial expressions such as sad and fearful, or sad and disgusted. This study provides new insights into the development of technology for detecting human facial expressions using deep learning and the MobileNetV2 model.
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使用卷积神经网络(CNN)算法实时检测面部表情
本研究讨论了卷积神经网络(CNN)与MobileNetV2模型在人类面部表情实时检测中的应用。本研究旨在利用深度学习算法开发人脸表情检测系统。本研究采用观察数据收集方法,从FER2013数据集中获取辅助数据,FER2013数据集包含28,709个训练样本、3,859个验证数据集和3,859个测试样本,共35,887张图像,分辨率为48x48,面部表情分为7类。训练结果表明,使用MobileNetV2的CNN模型在训练过程中准确率达到57%,在验证过程中准确率达到51%。基于对这些结果的分析,使用混淆矩阵进行测试,准确率为51%,得出的结论是该模型无法正确识别厌恶和恐惧类别的数据模式,导致准确性较低。导致系统无法识别表情的一些因素是由于面部表情之间的相似性,例如悲伤和恐惧,或者悲伤和厌恶。这项研究为利用深度学习和MobileNetV2模型检测人类面部表情的技术发展提供了新的见解。
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