从地理标记照片中提取人类移动数据

P. Järv
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引用次数: 2

摘要

用户在公共网站(Flickr, Panoramio)上分享的照片为挖掘行为数据提供了资源。当照片与位置和时间戳相关联时,我们可以重建用户的轨迹,并使用由此产生的移动轨迹来学习行为模式。本文主要研究了移动轨迹的两个方面:噪声滤波和语义标注。由于地理坐标和时间戳的误差,提取的轨迹最初是有噪声的。我们展示了如何对这些噪声进行部分过滤,并评估了在合成数据集上过滤的性能。为了利用移动轨迹,一个重要的步骤是语义注释。地点或活动与轨迹的片段相关联。这通常是通过整合相关地点的数据库并根据邻近程度将它们关联起来来实现的。我们证明了地点的受欢迎程度,如果可用,可以提高关联的准确性。在我们的实验中,自动标注的准确率从60%提高到68%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting Human Mobility Data from Geo-tagged Photos
Photos shared by users on public websites (Flickr, Panoramio) provide a resource for mining behavioural data. When the photos are associated with locations and time stamps, we can reconstruct the trajectories of the users and use the resulting mobility traces for learning behaviour patterns. In this paper we focus on two aspects of mobility traces: noise filtering and semantic annotation. The extracted trajectories are initially noisy due to errors in geographical coordinates and time stamps. We show how such noise can be partially filtered and evaluate the performance of the filtering on a synthetic dataset. To make use of the mobility traces, an essential step is semantic annotation. Places or activities are associated with segments of the traces. This is frequently performed by integrating a database of relevant places and associating them by proximity. We demonstrate that the popularity of the places, if available, can improve the association accuracy. In our experiment, the accuracy of automatic annotation increases from 60% to 68%.
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