以色彩为基础的视觉情感用于社会交流

Mayank Amencherla, L. Varshney
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引用次数: 12

摘要

社交媒体平台提供了丰富的信号集来理解社交生活的本质,情感分析技术已经被开发出来,用于理解Twitter和Facebook等网站文本的情感内容。然而,除了文本之外,大多数社交媒体平台都以图像为核心,图像的传播可能需要量化。在这里,我们开发了方法并展示了结果,以理解流行社交媒体平台Instagram上图像的视觉内容特征与其标签描述符的心理语言情感之间的关联。特别是,我们收集了几千张图像,并分析了颜色的几个方面来预测图像的情绪。这些结果肯定并澄清了一些关于颜色和情绪之间关系的心理学理论,比如色彩与快乐有关。在此开发的数据驱动的情感心理视觉见解可用于定义设计颜色量化方案的新颖保真度标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Color-based visual sentiment for social communication
Social media platforms provide rich signal sets to understand the nature of social life, and sentiment analysis techniques have been developed to understand the emotional content of text from sites like Twitter and Facebook. Beyond text however, most social media platforms have images at their core, and communication of images may require quantization. Here, we develop methods and present results on understanding the association between the visual content features of images on the popular social media platform Instagram and the psycholinguistic sentiment of their hashtag descriptors. In particular, we collect several thousand images and analyze several aspects of color to predict image sentiment. These results affirm and clarify several psychological theories on the relationship between color and mood/emotion, such as colorfulness being associated with happiness. The data-driven psychovisual insights into sentiment developed herein can be used to define novel fidelity criteria for designing color quantization schemes.
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