Optimization of Deep Learning Model Based on Genetic Algorithm for Facial Expression Recognition

Park, Jang-Sik
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Abstract

Deep learning shows outstanding performance in image and video analysis, such as object classification, object detection and semantic segmentation. In this paper, it is analyzed that the performances of deep learning models can be affected by characteristics of train dataset. It is proposed as a method for selecting activation function and optimization algorithm of deep learning to classify facial expression. Classification performances are compared and analyzed by applying various algorithms of each component of deep learning model for CK+, MMI, and KDEF datasets. As results of simulation, it is shown that genetic algorithm can be an effective solution for optimizing components of deep learning model.
基于遗传算法的面部表情识别深度学习模型优化
深度学习在图像和视频分析方面表现出色,如对象分类、对象检测和语义分割。本文分析了深度学习模型的性能会受到训练数据集特征的影响。提出了一种选择激活函数的方法和深度学习优化算法来对面部表情进行分类。通过对CK+、MMI和KDEF数据集应用深度学习模型各组成部分的各种算法,对分类性能进行比较和分析。仿真结果表明,遗传算法是优化深度学习模型各部分的有效方法。
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