使用深度学习的图像情感分析

Namita Mittal, Divya Sharma, M. Joshi
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引用次数: 30

摘要

情感是可以通过文本、图像或视频表达的感觉、喜欢和不喜欢的情绪或观点。对网络数据的情感分析现在正在成为社会分析的一个新兴研究领域。用户通过各种社交媒体(如Instagram、Facebook、Twitter、WhatsApp等)交换文本和上传图片,在网络上表达自己的情感。针对文本数据的情感分析已经做了大量的研究工作;专注于分析图像数据情感的工作有限。图像情感概念是anp,即形容词名词对自动发现网络图像的标签,用于检测图像所传达的情绪或情感。主要的挑战是预测或识别未标记图像的情绪。为了克服这一挑战,深度学习技术被用于情感分析,因为深度学习模型具有有效学习图像行为或极性的能力。图像识别、图像预测、图像情感分析和图像分类是神经网络(NN)表现良好的一些领域,这意味着深度学习在图像情感分析方面的显著表现。本文重点介绍了一些值得关注的深度学习模型,如深度神经网络(DNN)、卷积神经网络(CNN)、基于区域的CNN (R-CNN)和快速R-CNN,以及它们在图像情感分析中的应用适用性和局限性。该研究还讨论了这一新兴领域的挑战和前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Sentiment Analysis Using Deep Learning
Sentiments are feelings, emotions likes and dislikes or opinions which can be articulate through text, images or videos. Sentiment Analysis on web data is now becoming a budding research area of social analytics. Users express their sentiments on the web by exchanging texts and uploading images through a variety of social media like Instagram, Facebook, Twitter, WhatsApp etc. A lot of research work has been done for sentiment analysis of textual data; there has been limited work that focuses on analyzing the sentiment of image data. Image sentiment concepts are ANPs i.e. Adjective Noun Pairs automatically discovered tags of web images which are useful for detecting the emotions or sentiments conveyed by the image. The major challenge is to predict or identify the sentiments of unlabelled images. To overcome this challenge deep learning techniques are used for sentiment analysis, as deep learning models have the capability for effectively learning the image behavior or polarity. Image recognition, image prediction, image sentiment analysis, and image classification are some of the fields where Neural Network (NN) has performed well implying significant performance of deep learning in image sentiment analysis. This paper focuses on some of the noteworthy models of deep learning as Deep Neural Network (DNN), Convolutional Neural Network (CNN), Region-based CNN (R-CNN) and Fast R-CNN along with the suitability of their applications in image sentiment analysis and their limitations. The study also discusses the challenges and perspectives of this rising field.
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