我们能从地理标记的Flickr图片中预测地点的美景吗?

Ch. Md. Rakin Haider, Mohammed Eunus Ali
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引用次数: 1

摘要

在这项工作中,我们提出了一种新的技术,从Flickr照片的社会元数据中确定一个地点的美学评分。特别是,我们构建了机器学习分类器来预测一个位置的类别,其中每个类别对应于一组具有相同美学评级的位置。这些模型是在两个基于经验构建的数据集上进行训练的,这些数据集包含两个不同城市(罗马和巴黎)的地点,这些地点的审美评级是从TripAdvisor.com上收集的。在这项工作中,我们利用了这样一个想法,即在一个审美等级较高的地方,用户更有可能捕捉到照片,而其他用户更有可能与这张照片互动。我们的模型在罗马数据集上达到了79.48%的准确率(精度78.60%,召回率79.27%),在巴黎数据集上达到了73.78%的准确率(精度75.62%,召回率78.07%)。所提出的技术可以促进城市规划,旅游规划和推荐美观的路径。
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Can We Predict the Scenic Beauty of Locations from Geo-tagged Flickr Images?
In this work, we propose a novel technique to determine the aesthetic score of a location from social metadata of Flickr photos. In particular, we built machine learning classifiers to predict the class of a location where each class corresponds to a set of locations having equal aesthetic rating. These models are trained on two empirically build datasets containing locations in two different cities (Rome and Paris) where aesthetic ratings of locations were gathered from TripAdvisor.com. In this work we exploit the idea that in a location with higher aesthetic rating, it is more likely for an user to capture a photo and other users are more likely to interact with that photo. Our models achieved as high as 79.48% accuracy (78.60% precision and 79.27% recall) on Rome dataset and 73.78% accuracy(75.62% precision and 78.07% recall) on Paris dataset. The proposed technique can facilitate urban planning, tour planning and recommending aesthetically pleasing paths.
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IUI 2022: 27th International Conference on Intelligent User Interfaces, Helsinki, Finland, March 22 - 25, 2022 Employing Social Media to Improve Mental Health: Pitfalls, Lessons Learned, and the Next Frontier IUI '21: 26th International Conference on Intelligent User Interfaces, College Station, TX, USA, April 13-17, 2021 Towards Making Videos Accessible for Low Vision Screen Magnifier Users. SaIL: Saliency-Driven Injection of ARIA Landmarks.
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