面部情绪识别的卷积神经网络超参数优化

A. Vulpe-Grigorasi, O. Grigore
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引用次数: 15

摘要

本文提出了一种优化卷积神经网络超参数的方法,以提高面部情绪识别的准确性。在超参数离散值定义的搜索空间中,采用随机搜索算法生成和训练模型,确定网络的最优超参数。采用FER2013数据库对最佳模型结果进行训练和评价,准确率为72.16%。
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Convolutional Neural Network Hyperparameters optimization for Facial Emotion Recognition
This paper presents a method of optimizing the hyperparameters of a convolutional neural network in order to increase accuracy in the context of facial emotion recognition. The optimal hyperparameters of the network were determined by generating and training models based on Random Search algorithm applied on a search space defined by discrete values of hyperparameters. The best model resulted was trained and evaluated using FER2013 database, obtaining an accuracy of 72.16%.
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