基于减法预处理的视频人类情感识别

Zhihao He, Tian Jin, Amlan Basu, J. Soraghan, G. D. Caterina, L. Petropoulakis
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引用次数: 12

摘要

本文提出了一种新的图像预处理方法,能够清晰地显示图像的特征或重要信息。深度学习方法在过去十年中发展迅速,在许多领域都比传统的机器学习方法具有更好的性能。深度学习在复杂的多类分类挑战中表现出强大的能力。视频面部表情识别是最热门的分类主题之一,在机器人和自动运动领域将成为必不可少的。该系统将新型视频预处理技术与卷积神经网络(CNN)相结合。提出新的预处理方法是因为我们认为个体的情绪是动态的,这意味着面部的变化是关键特征。RAVDESS是用来训练和测试神经网络的视频集。从RAVDESS数据集中选取无音频的视频歌曲,以关注视频帧的差异。所选的视频集有六种不同类型的情绪。每个视频都以悦耳的方式呈现一个句子。在选取视频集的基础上,采用新的预处理方法设计并训练了新系统。随后,将新方法的分类结果与使用相同视频情感识别数据集的分类结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Emotion Recognition in Video Using Subtraction Pre-Processing
In this paper, we describe a new image pre-processing method, which can show features or important information clearly. Deep learning methods have grown rapidly in the last ten years and have better performance than the traditional machine learning methods in many domains. Deep learning shows its powerful ability particular in difficult multi-classes classification challenges. Video Facial expression recognition is one of the most popular classification topics and will become essential in robotics and auto-motion fields. The new system presented is a combination of new video pre-processing and Convolutional Neural Network (CNN). The new pre-processing method is proposed because we believe individual emotions are dynamic, which means the change of the face is the key feature. RAVDESS is the video set used, to train and test the neural network. From RAVDESS dataset the video songs without audio are taken for focusing on video frames differences. The chosen video set has six different classes of emotions. Each video presents a sentence in a melodious way. Based on the chosen video set, the new system with a new pre-processing method has been designed and trained. Later, the classification result of the new method has been compared with others in which the same dataset for video emotion recognition was used.
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