Classifying Emotion Using Convolutional Neural Networks

Jonathan L. Moran
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引用次数: 1

Abstract

Author(s): Moran, Jonathan L | Abstract: Despite the computer’s historical success as a communication tool, machines themselves have yet to fully master the most basic forms of nonverbal communication that we humans use daily. Gender, ethnicity, age and emotional state is often perceived immediately by most humans engaging in conversation. However, training a classifier algorithm to accomplish this form of behavioral observation is a rather difficult task. In this exploratory review, we will be replicating object recognition and deep learning in a convolutional neural network to ultimately train a model to distinguish the universal human emotions from the FER2013 facial expression dataset (Kaggle, 2013).
使用卷积神经网络对情绪进行分类
摘要:尽管计算机作为一种交流工具在历史上取得了成功,但机器本身还没有完全掌握我们人类日常使用的最基本的非语言交流形式。性别、种族、年龄和情绪状态通常是大多数人在交谈时立即察觉到的。然而,训练分类器算法来完成这种形式的行为观察是一项相当困难的任务。在这篇探索性综述中,我们将在卷积神经网络中复制对象识别和深度学习,最终训练一个模型,以区分FER2013面部表情数据集中的普遍人类情绪(Kaggle, 2013)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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