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Large-Scale Historical Watermark Recognition: dataset and a new consistency-based approach

机译:大规模的历史水印识别:数据集和基于新的一致性方法

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Historical watermark recognition is a highly practical, yet unsolved challenge for archivists and historians. With a large number of well-defined classes, cluttered and noisy samples, different types of representations, both subtle differences between classes and high intra-class variation, historical watermarks are also challenging for pattern recognition. In this paper, overcoming the difficulty of data collection, we present a large public dataset with more than 6k new photographs, allowing for the first time to tackle at scale the scenarios of practical interest for scholars: one-shot instance recognition and cross-domain one-shot instance recognition amongst more than 16k fine-grained classes. We demonstrate that this new dataset is large enough to train modern deep learning approaches, and show that standard methods can be improved considerably by using mid-level deep features. More precisely, we design both a matching score and a feature fine-tuning strategy based on filtering local matches using spatial consistency. This consistency-based approach provides important performance boost compared to strong baselines. Our model achieves 55% top-1 accuracy on our very challenging 16,753-class one-shot cross-domain recognition task, each class described by a single drawing from the classic Briquet catalog. In addition to watermark classification, we show our approach provides promising results on fine-grained sketch-based image retrieval.
机译:历史水印识别是档案论坛和历史学家的一种高度实用,但未解决的挑战。凭借大量明确的课程,杂乱和嘈杂的样本,不同类型的表示,阶级与阶级内的微妙差异,历史水印也是具有挑战性的模式识别。在本文中,克服了数据收集的难度,我们展示了一个拥有超过6k新照片的大型公共数据集,首次允许在缩放学者的实际兴趣的场景中进行解决:单拍实例识别和跨域一拍实例识别超过16k细粒度的课程。我们证明,这一新数据集足以训练现代深度学习方法,并表明通过使用中级深度特征可以大大提高标准方法。更确切地说,我们使用空间一致性来设计基于过滤本地匹配的匹配分数和特征微调策略。与强基线相比,这种基于一致的方法提供了重要的性能提升。我们的模型在我们非常具有挑战性的16,753级单次横域识别任务中实现了55%的前1个精度,每个类由经典的丰陆目录中的单个图纸描述。除了水印分类之外,我们还展示了我们的方法,提供了对基于细粒草图的图像检索的有希望的结果。

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