EMOTIONET:一种使用tpu进行面部和情绪分类的多卷积神经网络分层方法

Rebecca D'Agostino, Thomas Schmidt
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引用次数: 0

摘要

近年来,机器学习以及识别和检测任务已成为一个突出的话题。[1]本研究的重点是改进在野外使用深度卷积神经网络进行面部情绪识别的任务,采用两部分层次结构,由两个专注于两个不同任务的深度神经网络组成。第一个任务使用卷积神经网络对人脸或非人脸进行分类。第二个任务是使用另一个神经网络确定一张脸是否在一组选定的情绪中显示出这种情绪,描绘出快乐和悲伤的脸。与CPU集群上的平台相比,以这种方式分解识别任务已经产生了一个观察到的改进,总体准确率达到90%,并且还使用tpu来提高计算能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMOTIONET: A Multi-Convolutional Neural Network Hierarchical Approach to Facial and Emotional Classification using TPUs
Machine Learning and the tasks of recognition and detection have become a salient topic in recent years. [1] This study is focused on improving the task of using deep convolutional neural networks for facial emotion recognition in the wild with a two-part hierarchical architecture made up of two deep neural networks that are focused on two different tasks. The first task uses a convolutional neural network to classify face or not face. The second task ascertains using another neural network if a face is displaying the emotion within a selected suite of emotions, depicting joyful and sad faces. Factoring the recognition task in this way has produced an observed improvement on previous published work with an overall accuracy of 90% compared to platforms on a CPU cluster and also using TPUs to increase computational power.
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