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Geographical Topics Learning of Geo-Tagged Social Images

机译:地理标记社会图像的地理主题学习

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摘要

With the availability of cheap location sensors, geotagging of images in online social media is very popular. With a large amount of geo-tagged social images, it is interesting to study how these images are shared across geographical regions and how the geographical language characteristics and vision patterns are distributed across different regions. Unlike textual document, geo-tagged social image contains multiple types of content, i.e., textual description, visual content, and geographical information. Existing approaches usually mine geographical characteristics using a subset of multiple types of image contents or combining those contents linearly, which ignore correlations between different types of contents, and their geographical distributions. Therefore, in this paper, we propose a novel method to discover geographical characteristics of geo-tagged social images using a geographical topic model called geographical topic model of social images (GTMSIs). GTMSI integrates multiple types of social image contents as well as the geographical distributions, in which image topics are modeled based on both vocabulary and visual features. In GTMSI, each region of the image would have its own topic distribution, and hence have its own language model and vision pattern. Experimental results show that our GTMSI could identify interesting topics and vision patterns, as well as provide location prediction and image tagging.
机译:随着廉价位置传感器的普及,在线社交媒体中图像的地理标记非常流行。使用大量带有地理标签的社会图像,研究这些图像如何在地理区域之间共享以及地理语言特征和视觉模式如何在不同区域之间分布是很有趣的。与文本文档不同,带有地理标签的社交图像包含多种类型的内容,即文本描述,视觉内容和地理信息。现有方法通常使用多种类型的图像内容的子集或线性组合这些内容来挖掘地理特征,而忽略了不同类型的内容及其地理分布之间的相关性。因此,在本文中,我们提出了一种新的方法,该方法使用称为社会图像的地理主题模型(GTMSI)的地理主题模型来发现带有地理标签的社会图像的地理特征。 GTMSI集成了多种类型的社会图像内容以及地理分布,其中图像主题基于词汇和视觉特征进行建模。在GTMSI中,图像的每个区域都有自己的主题分布,因此也有自己的语言模型和视觉模式。实验结果表明,我们的GTMSI可以识别有趣的主题和视觉模式,并提供位置预测和图像标记。

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