Face Expression Classification in Children Using CNN

Yusril Ihza, D. Lelono
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引用次数: 1

Abstract

One of the turbulent emotions can be recognized from facial expressions. When compared with adults, children's facial expressions are more expressive for positive emotions and ambiguous for negative emotions so that they are much more difficult to recognize. Ambiguous in terms of negative emotions, for example, when children are angry, sometimes they show an expressionless face, making it difficult to know what emotions the child is experiencing. Therefore, it is proposed research using Convolutional Neural Network with ResNet-50 architecture. According to [1] CNN Resnet-50 is superior to other facial recognition methods, specifically in the classification of facial expressions. CNN ResNet-50 generates a model during the training process, and the model will be used during the testing process. The dataset used is Children's Spontaneous facial Expressions (LIRIS-CSE) data proposed by [2]. CNN ResNet-50 can identify children's expressions well, including expressions of anger, disgust, fear, happy, sad and surprise. The results showed a very significant increase in accuracy, namely in testing data testing reached 99.89%.
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基于CNN的儿童面部表情分类
从面部表情中可以识别出其中一种骚动的情绪。与成年人相比,儿童的面部表情对积极情绪更具表达力,对消极情绪则更模糊,因此更难识别。在负面情绪方面模棱两可,例如,当孩子生气时,有时他们会表现出面无表情,很难知道孩子正在经历什么情绪。因此,提出了采用ResNet-50结构的卷积神经网络进行研究。根据[1]CNN Resnet-50优于其他面部识别方法,特别是在面部表情的分类方面。CNN ResNet-50在训练过程中生成一个模型,该模型将在测试过程中使用。使用的数据集是[2]提出的儿童自发面部表情(LIRIS-CSE)数据。CNN ResNet-50可以很好地识别儿童的表情,包括愤怒、厌恶、恐惧、快乐、悲伤和惊讶的表情。结果显示,准确率有了非常显著的提高,即在测试数据中测试达到99.89%。
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20
审稿时长
12 weeks
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