基于视觉和标签信息的景点图像情境聚类混合方法

Chia-Huang Chen, Y. Takama
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引用次数: 4

摘要

最近的网络趋势是通过上传照片到网络相册来分享他们的旅行经历。观光景点的分享照片对于那些打算去那里旅游的人来说是重要的资源。由于旅游景点的场景会随着天气和季节等不同的情况而变化,因此将照片自动分类为不同的情况,有望有助于游客计划何时前往。本文提出了一种基于内容的图像聚类与基于图像标签信息的过滤相结合的混合方法。通过使用地理标签信息从网络相册中检索图像,可以将收集到的图像限制在一个合理的边界内,从而消除异常值。基于内容的图像聚类将收集到的图像分为夜间、日出/日落、多云和光照情况。此外,利用图像的时间戳进一步验证了四种情况类别,提高了准确率。实验结果表明,基于内容的图像聚类和基于标签的过滤混合方法能够有效地获得精度高、召回率高的聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Approach of Using Visual and Tag Information for Situation-Oriented Clustering of Sightseeing Spot Images
Recent trend on the web is to share their traveling experience via uploading photos to web albums. Shared photos of sightseeing spots are important resources for those who are going to visit there. As sightseeing spot scenes vary with different situations, such as weather and season, automatic classification of photos into different situations is expected to be beneficial for tourists to plan when to visit there. This paper proposes a hybrid approach of combining content-based image clustering with filtering based on tag information of image. By using geotag information when retrieving images from web albums, collected images can be limited to a reasonable boundary to eliminate outliers. Content-based image clustering groups collected images into night, sunrise/sunset, cloudy, and shine situations. Moreover, by using the timestamp of images, the four situation categories are further verified to increase the accuracy. Experimental results show that the hybrid approach of content-based image clustering and tag-based filtering is effective for obtaining clusters with high precision and recall.
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