使用基于艺术描绘的面部轮廓识别的深度学习在野外识别古罗马硬币

Imanol Schlag, Ognjen Arandjelovic
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引用次数: 30

摘要

一方面,作为文化遗产领域中一个特别有趣的应用,同时也是一个技术上具有挑战性的问题,基于计算机视觉的罗马帝国硬币分析吸引了越来越多的研究。在本文中,我们做了一些重要的贡献。首先,我们解决了现有工作的一个关键限制,即主要以应用通用目标识别技术和缺乏使用领域知识为特征。相比之下,我们的工作接近硬币识别的方式与人类专家大致相同:通过识别普遍显示在正面的皇帝。为此,我们开发了一个深度卷积网络,精心设计了一个有效的人脸识别实例。同样重要的是,我们还解决了先前研究的一个主要方法缺陷,正如我们详细解释的那样,这个缺陷不够系统和严谨,并且受到混杂因素的困扰。最后,我们介绍了三个精心收集和注释的数据集,并使用这些数据集证明了所提出方法的有效性,该方法的性能超过了目前最先进的性能大约一个数量级。
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Ancient Roman Coin Recognition in the Wild Using Deep Learning Based Recognition of Artistically Depicted Face Profiles
As a particularly interesting application in the realm of cultural heritage on the one hand, and a technically challenging problem, computer vision based analysis of Roman Imperial coins has been attracting an increasing amount of research. In this paper we make several important contributions. Firstly, we address a key limitation of existing work which is largely characterized by the application of generic object recognition techniques and the lack of use of domain knowledge. In contrast, our work approaches coin recognition in much the same way as a human expert would: by identifying the emperor universally shown on the obverse. To this end we develop a deep convolutional network, carefully crafted for what is effectively a specific instance of profile face recognition. No less importantly, we also address a major methodological flaw of previous research which is, as we explain in detail, insufficiently systematic and rigorous, and mired with confounding factors. Lastly, we introduce three carefully collected and annotated data sets, and using these demonstrate the effectiveness of the proposed approach which is shown to exceed the performance of the state of the art by approximately an order of magnitude.
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