基于神经网络的人脸图像情感分类

Ethan Bevan, Jason Rafe Miller
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引用次数: 0

摘要

利用人工神经网络进行面部识别是一种生物识别技术,目前被用于网络安全和刑事调查等领域。我们试图通过预测来自动区分快乐的人脸图像和悲伤的人脸图像,这种预测比随机猜测要好。我们在12,000张人脸的公共图像数据集上训练了一个机器学习模型(VGG16,一种卷积神经网络)。当模型在训练中从未见过的200张图片的测试集显示出来时,结果模型预测情绪标签的准确率为93%。结果表明,VGG16卷积神经网络从我们的数据中学习特征,产生的输出足以训练模型的附加层,以93%的准确率执行我们的任务。我们怀疑这是因为VGG16已经熟悉了它从ImageNet(一个超过200万张图像的独立数据集)中学到的特征。目前尚不清楚我们的模型是否可以预测FER13数据集之外的新图像的标签,但初步测试显示了有希望的结果。我们的模型是使用云计算服务和相对较少的数据进行训练的,这表明这些类型的结果很容易被所有人获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotion classification of human facial images by a neural network
Facial recognition using artificial neural networks is a biometric technology currently being used in fields such as cybersecurity and criminal investigation. We sought to automatically distinguish between an image of a happy human face and an image of a sad human face with predictions that are better than random guesses. We trained a machine learning model (VGG16, a type of convolutional neural network) on a public image dataset of 12,000 human faces. The resulting model predicted the emotion label 93% of time when shown a test set of 200 images that the model had never seen during training. The results show that the VGG16 convolutional neural network learned features from our data that produced an output which was sufficient to train the additional layers of the model to perform our task at 93% accuracy. We suspect this is because VGG16 was already familiar with features that it learned from ImageNet (a separate dataset of over 2 million images). It is currently unknown whether our model can predict labels for new images outside of the FER13 dataset, but preliminary tests show promising results. Our model was trained using a cloud computing service and a relatively small amount of data, indicating that these kinds of results are easily obtainable by all.
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