Discovering areas of interest with geo-tagged images and check-ins

Jiajun Liu, Zi Huang, Lei Chen, Heng Tao Shen, Zhixian Yan
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引用次数: 67

Abstract

Geo-tagged image is an ideal source for the discovery of popular travel places. However, the aspects of popular venues for daily-life purposes like dining and shopping are often missing in the mined locations from geo-tagged images. Fortunately check-in websites provide us a unique opportunity of analyzing people's preferences in their daily lives to complement the knowledge mined from geo-tagged images. This paper presents a novel approach for the discovery of Areas of Interest (AoI). By analyzing both geo-tagged images and check-ins, the approach exploits travelers' flavors as well as the preferences of daily-life activities of local residents to find AoI in a city. The proposed approach consists of two major steps. Firstly, we devise a density-based clustering method to discover AoI, mainly based on the image densities but also reinforced by the secondary densities from the images' neighboring venues. Then we propose a novel joint authority analysis framework to rank AoI. The framework simultaneously considers both the location-location transitions, and the user-location relations. An interactive presentation interface for visualizing AoI is also presented. The approach is tested with very large datasets for Shanghai city. They consist of 49,460 geo-tagged images from Panoramio.com, and 1,361,547 check-ins from the check-in website Qieke.com. By evaluating the ranking accuracy and quality of AoI, we demonstrate great improvements of our method over compared methods.
发现感兴趣的区域与地理标记的图像和签到
地理标记图像是发现热门旅游地点的理想来源。然而,日常生活中受欢迎的场所,如餐饮和购物,往往在地理标记图像的挖掘位置中缺失。幸运的是,签到网站为我们提供了一个独特的机会来分析人们在日常生活中的偏好,以补充从地理标记图像中挖掘的知识。提出了一种发现感兴趣区域(AoI)的新方法。该方法通过分析地理标记图像和签到,利用旅行者的口味和当地居民的日常生活活动偏好来寻找城市中的AoI。提议的方法包括两个主要步骤。首先,我们设计了一种基于密度的聚类方法来发现AoI,该方法主要基于图像密度,并通过图像邻近场地的二次密度来增强AoI。然后,我们提出了一种新的联合权威分析框架来对AoI进行排序。该框架同时考虑了位置-位置转换和用户-位置关系。还提供了一个用于可视化AoI的交互式表示界面。该方法在上海市的大型数据集上进行了测试。它们包括来自Panoramio.com的49460张带有地理标记的图片,以及来自住宿网站qiieke.com的1361547张入住记录。通过评估AoI的排序精度和质量,我们证明了我们的方法比比较的方法有很大的改进。
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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