Spatio-temporal sentiment hotspot detection using geotagged photos

Yi Zhu, S. Newsam
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引用次数: 30

Abstract

We perform spatio-temporal analysis of public sentiment using geotagged photo collections. We develop a deep learning-based classifier that predicts the emotion conveyed by an image. This allows us to associate sentiment with place. We perform spatial hotspot detection and show that different emotions have distinct spatial distributions that match expectations. We also perform temporal analysis using the capture time of the photos. Our spatio-temporal hotspot detection correctly identifies emerging concentrations of specific emotions and year-by-year analyses of select locations show there are strong temporal correlations between the predicted emotions and known events.
基于地理标记照片的时空情感热点检测
我们使用地理标记的照片集对公众情绪进行时空分析。我们开发了一个基于深度学习的分类器来预测图像所传达的情感。这使我们能够将情感与地点联系起来。我们进行了空间热点检测,并表明不同的情绪具有与期望相匹配的不同空间分布。我们还使用照片的捕获时间进行时间分析。我们的时空热点检测正确地识别了特定情绪的新集中,对选定地点的逐年分析表明,预测的情绪与已知事件之间存在很强的时间相关性。
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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