基于小波空间分析的flickr事件检测

Ling Chen, Abhishek Roy
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引用次数: 248

摘要

近年来,从网络资源中检测事件引起了越来越多的研究兴趣。本文的重点是检测互联网图像社区网站Flickr上的照片中的事件。这些结果可用于方便用户按事件搜索和浏览照片。考虑到:(1)Flickr数据是嘈杂的,因为有些照片与现实世界的事件无关;(2)不容易捕捉照片的内容。本文介绍了我们通过利用用户提供的标签对照片进行注释来检测Flickr照片中的事件的努力。特别是,首先分析了标签使用的时间和位置分布,其中使用小波变换来抑制噪声。然后,我们识别与事件相关的标签,并进一步区分非周期事件和周期事件的标签。然后,对事件相关的标签进行聚类,使每个代表一个事件的聚类由具有相似的时间和位置分布模式以及相似的关联照片的标签组成。最后,对于每个标签簇,提取与所表示的事件相对应的照片。我们使用从Flickr收集的一组真实数据来评估我们的方法的性能。实验结果表明,我们的方法可以有效地检测Flickr照片集合中的事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event detection from flickr data through wavelet-based spatial analysis
Detecting events from web resources has attracted increasing research interests in recent years. Our focus in this paper is to detect events from photos on Flickr, an Internet image community website. The results can be used to facilitate user searching and browsing photos by events. The problem is challenging considering: (1) Flickr data is noisy, because there are photos unrelated to real-world events; (2) It is not easy to capture the content of photos. This paper presents our effort in detecting events from Flickr photos by exploiting the tags supplied by users to annotate photos. In particular, the temporal and locational distributions of tag usage are analyzed in the first place, where a wavelet transform is employed to suppress noise. Then, we identify tags related with events, and further distinguish between tags of aperiodic events and those of periodic events. Afterwards, event-related tags are clustered such that each cluster, representing an event, consists of tags with similar temporal and locational distribution patterns as well as with similar associated photos. Finally, for each tag cluster, photos corresponding to the represented event are extracted. We evaluate the performance of our approach using a set of real data collected from Flickr. The experimental results demonstrate that our approach is effective in detecting events from the Flickr photo collection.
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