Image Selection in Photo Albums

Dmitry Kuzovkin, T. Pouli, R. Cozot, O. Meur, J. Kervec, K. Bouatouch
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引用次数: 10

Abstract

The selection of the best photos in personal albums is a task that is often faced by photographers. This task can become laborious when the photo collection is large and it contains multiple similar photos. Recent advances on image aesthetics and photo importance evaluation has led to the creation of different metrics for automatically assessing a given image. However, these metrics are intended for the independent assessment of an image, without considering the possible context implicitly present within photo albums. In this work, we perform a user study for assessing how users select photos when provided with a complete photo album---a task that better reflects how users may review their personal photos and collections. Using the data provided by our study, we evaluate how existing state-of-the-art photo assessment methods perform relative to user selection, focusing in particular on deep learning based approaches. Finally, we explore a recent framework for adapting independent image scores to collections and evaluate in which scenarios such an adaptation can prove beneficial.
照片相册中的图像选择
在个人相册中选择最好的照片是摄影师经常面临的一项任务。当照片集很大并且包含多张相似的照片时,此任务可能会变得费力。图像美学和照片重要性评估的最新进展导致了自动评估给定图像的不同指标的创建。然而,这些指标旨在独立评估图像,而不考虑相册中隐含的可能上下文。在这项工作中,我们进行了一项用户研究,以评估用户在提供完整的相册时如何选择照片——这项任务更好地反映了用户如何查看他们的个人照片和收藏。利用我们的研究提供的数据,我们评估了现有的最先进的照片评估方法相对于用户选择的表现,特别关注基于深度学习的方法。最后,我们探索了一个最新的框架,用于将独立图像评分适应于集合,并评估在哪些情况下这种适应可以证明是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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