使用ResNet进行视觉情感识别

Azmi Najid, D. Chahyati
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引用次数: 0

摘要

面对一张图片,人们会有情绪反应,比如高兴、恐惧、厌恶等。本研究的目的是基于人类对图像的反应,利用ResNet深度架构对图像进行分类。问题在于,人类的情绪反应是主观的,因此很难获得自信地标记数据集。本研究试图通过实现和分析从大型数据集(如ImageNet)到相对较小的视觉情感数据集的迁移学习来克服这个问题。除此之外,由于情绪是由低级和高级特征决定的,我们将对预训练的残差网络进行修改,以便更好地利用低级和高级特征用于视觉情绪识别。结果表明,从ImageNet对象识别中获得的一般(低级)特征和特定(高级)特征可以很好地用于视觉情感识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Emotion Recognition Using ResNet
Given an image, humans have emotional reactions to it such as happy, fear, disgust, etc. The purpose of this research is to classify images based on human's reaction to them using ResNet deep architecture. The problem is that emotional reaction from humans are subjective, therefore a confidently labelled dataset is difficult to obtain. This research tries to overcome this problem by implementing and analyzing transfer learning from a big dataset such as ImageNet to relatively small visual emotion dataset. Other than that, because emotion is determined by low-level and high-level features, we will make a modification to a pretrained residual network to better utilize low-level and high-level feature to be used in visual emotion recognition. Results show that general (low-level) features and specific (high-level) features obtained from ImageNet object recognition can be well utilized for visual emotion recognition.
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