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Good View Hunting: Learning Photo Composition from Dense View Pairs

机译:良好的视野狩猎:从密集视野对中学习照片构图

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Finding views with good photo composition is a challenging task for machine learning methods. A key difficulty is the lack of well annotated large scale datasets. Most existing datasets only provide a limited number of annotations for good views, while ignoring the comparative nature of view selection. In this work, we present the first large scale Comparative Photo Composition dataset, which contains over one million comparative view pairs annotated using a cost-effective crowdsourcing workflow. We show that these comparative view annotations are essential for training a robust neural network model for composition. In addition, we propose a novel knowledge transfer framework to train a fast view proposal network, which runs at 75+ FPS and achieves state-of-the-art performance in image cropping and thumbnail generation tasks on three benchmark datasets. The superiority of our method is also demonstrated in a user study on a challenging experiment, where our method significantly outperforms the baseline methods in producing diversified well-composed views.
机译:查找具有良好照片构图的视图对于机器学习方法而言是一项艰巨的任务。一个关键的困难是缺少注释充分的大规模数据集。现有的大多数数据集都只为有限的视图提供有限数量的注释,而忽略了视图选择的比较性。在这项工作中,我们展示了第一个大规模的“比较照片构图”数据集,其中包含使用具有成本效益的众包工作流进行注释的超过一百万个比较视图对。我们表明,这些比较视图注释对于训练健壮的神经网络组成模型至关重要。此外,我们提出了一种新颖的知识转移框架来训练快速查看提议网络,该网络以75+ FPS的速度运行,并在三个基准数据集上实现了图像裁剪和缩略图生成任务的最新性能。在一项具有挑战性的实验的用户研究中,我们的方法的优越性也得到了证明,该方法在生成多样化且结构合理的视图方面显着优于基线方法。

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