Convolutional Neural Network With Batch Normalization for Classification of Emotional Expressions Based on Facial Images

B. K. Triwijoyo, Ahmat Adil, Anthony Anggrawan
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引用次数: 3

Abstract

Emotion recognition through facial images is one of the most challenging topics in human psychological interactions with machines. Along with advances in robotics, computer graphics, and computer vision, research on facial expression recognition is an important part of intelligent systems technology for interactive human interfaces where each person may have different emotional expressions, making it difficult to classify facial expressions and requires training data. large, so the deep learning approach is an alternative solution., The purpose of this study is to propose a different Convolutional Neural Network (CNN) model architecture with batch normalization consisting of three layers of multiple convolution layers with a simpler architectural model for the recognition of emotional expressions based on human facial images in the FER2013 dataset from Kaggle. The experimental results show that the training accuracy level reaches 98%, but there is still overfitting where the validation accuracy level is still 62%. The proposed model has better performance than the model without using batch normalization.
基于批处理归一化的卷积神经网络在面部图像情绪表情分类中的应用
在人类与机器的心理互动中,通过面部图像进行情感识别是最具挑战性的课题之一。随着机器人技术、计算机图形学和计算机视觉技术的进步,面部表情识别研究是交互式人机界面智能系统技术的重要组成部分,其中每个人可能有不同的情绪表情,使得面部表情分类困难并且需要训练数据。很大,所以深度学习方法是另一种解决方案。本研究的目的是提出一种不同的卷积神经网络(CNN)模型架构,该架构由三层的多个卷积层组成,具有更简单的架构模型,用于基于Kaggle FER2013数据集中的人类面部图像的情绪表情识别。实验结果表明,训练精度达到98%,但仍存在过拟合,验证精度仍为62%。该模型比未使用批处理归一化的模型具有更好的性能。
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