A Deep Learning Model for Human Emotion Recognition on Small Dataset

Rupali Gill, Jaiteg Singh
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引用次数: 1

Abstract

Humans express their emotions through facial expressions. On the other hand, facial expression recognition has remained a difficult and fascinating subject in computer vision. For recognition of emotions is difficult because of the lack of a landmark demarcation between the emotions on the face, as well as the complexity and variety. In this paper, the human emotional states through facial expression are finding through the Convolutional neural network model. Firstly, the images have been taken from the publically Jaffe (Japanese female facial expression) and KDEF (Karolinska Directed Emotional Faces) dataset. After the dataset is taken the threshold technique has been applied for removing the background in the image for improving accuracy. Therefore, the proposed CNN model achieves higher accuracy as compared toprevious state-of-the-art techniques for emotion recognition.
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基于小数据集的人类情感识别深度学习模型
人类通过面部表情来表达情感。另一方面,面部表情识别一直是计算机视觉领域的一个难点和难点。由于面部情绪之间缺乏划界的标志,以及情绪的复杂性和多样性,使得情绪识别变得困难。本文通过卷积神经网络模型发现人类面部表情的情绪状态。首先,这些图像取自公开的Jaffe(日本女性面部表情)和KDEF(卡罗林斯卡定向情感面孔)数据集。采集数据集后,采用阈值技术去除图像中的背景,提高精度。因此,与之前最先进的情感识别技术相比,所提出的CNN模型达到了更高的精度。
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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