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Geo-informative discriminative image representation by semi-supervised hierarchical topic modeling

机译:半监督分层主题建模的地理信息判别性图像表示

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Nowadays, the prevalence of sharing tourist photos to online communities has created an increasing demand for mining discriminative architecture aspects from historic landmarks. Some previous researches have demonstrated that topic models could discover discriminative features represented by meaningful visual-topics. However, they seldom exploited the indicative function of geo-tags and the hierarchy in architecture characteristics. In order to utilize this information, we proposed a semi-supervised hierarchical topic modeling approach (namely, shTM). In our approach, every image could be represented by a probability distribution over selected geo-related visual-topics from a partly randomized topic tree. We evaluated our approach on a real-world dataset with over 26 thousand geo-informative photos from Flickr. Experiments show that shTM topics could reveal more discriminative aspects of a specific architecture than other well-known image features, such as HOG and SIFT, on the tasks of automatic photo categorization and geographical information retrieval.
机译:如今,将游客的照片分享到在线社区的盛行对从历史性地标挖掘具有区别性的建筑方面提出了越来越高的要求。先前的一些研究表明,主题模型可以发现有意义的视觉主题所代表的辨别特征。但是,他们很少利用地理标签的指示功能和体系结构特征中的层次结构。为了利用此信息,我们提出了一种半监督的分层主题建模方法(即shTM)。在我们的方法中,每张图像都可以通过从部分随机的主题树中选择的与地理相关的视觉主题上的概率分布来表示。我们在来自Flickr的超过2万6千张具有地理信息的照片的真实数据集上评估了我们的方法。实验表明,在自动照片分类和地理信息检索的任务上,shTM主题可以比其他众所周知的图像功能(例如HOG和SIFT)揭示特定体系结构的更多区分性。

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