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Visual and Textual Sentiment Analysis of Brand-Related Social Media Pictures Using Deep Convolutional Neural Networks

机译:使用深度卷积神经网络的品牌相关社交媒体图片的视觉和文本情感分析

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Social media pictures represent a rich source of knowledge for companies to understand consumers' opinions, as they are available in real time and at low costs and represent an active feedback which is of importance not only for companies developing products, but also to their rivals and potential consumers. In order to estimate the overall sentiment of a picture, it is essential to not only judge the sentiment of the visual elements but also to understand the meaning of the included text. This paper introduces an approach to estimate the overall sentiment of brand-related pictures from social media based on both visual and textual clues. In contrast to existing papers, we do not consider text accompanying a picture, but text embedded in a picture, which is more challenging since the text has to be detected and recognized first, before its sentiment can be identified. Based on visual and textual features extracted from two trained Deep Convolutional Neural Networks (DCNNs), the sentiment of a picture is identified by a machine learning classifier. The approach was applied and tested on a newly collected dataset, "GfK Verein Dataset" and several machine learning algorithms are compared. The experiments yield high accuracy, demonstrating the effectiveness and suitability of the proposed approach.
机译:社交媒体图片代表了公司了解消费者意见的丰富知识资源,因为这些信息可以实时,低成本地获得,并且代表着积极的反馈,这不仅对开发产品的公司而且对他们的竞争对手和竞争对手都很重要。潜在的消费者。为了估计图片的整体情感,不仅要判断视觉元素的情感,而且要理解所包含文本的含义,这一点至关重要。本文介绍了一种基于视觉和文本线索来估计社交媒体中与品牌相关的图片的整体情感的方法。与现有论文相比,我们不考虑文本附带图片,而是嵌入图片中的文本,这更具挑战性,因为必须先检测和识别文本,然后才能识别其情绪。基于从两个经过训练的深度卷积神经网络(DCNN)中提取的视觉和文字特征,机器学习分类器可以识别图片的情绪。该方法已在新收集的数据集“ GfK Verein数据集”上应用和测试,并比较了几种机器学习算法。实验产生了高精度,证明了该方法的有效性和适用性。

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