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Towards Computer Vision Based Ancient Coin Recognition in the Wild - Automatic Reliable Image Preprocessing and Normalization

机译:拓展基于计算机视觉的古老硬币识别在野外 - 自动可靠图像预处理和归一化

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As an attractive area of application in the sphere of cultural heritage, in recent years automatic analysis of ancient coins has been attracting an increasing amount of research attention from the computer vision community. Recent work has demonstrated that the existing state of the art performs extremely poorly when applied on images acquired in realistic conditions. One of the reasons behind this lies in the (often implicit) assumptions made by many of the proposed algorithms -a lack of background clutter, and a uniform scale, orientation, and translation of coins across different images. These assumptions are not satisfied by default and before any further progress in the realm of more complex analysis is made, a robust method capable of preprocessing and normalizing images of coins acquired 'in the wild' is needed. In this paper we introduce an algorithm capable of localizing and accurately segmenting out a coin from a cluttered image acquired by an amateur collector. Specifically, we propose a two stage approach which first uses a simple shape hypothesis to localize the coin roughly and then arrives at the final, accurate result by refining this initial estimate using a statistical model learnt from large amounts of data. Our results on data collected 'in the wild' demonstrate excellent accuracy even when the proposed algorithm is applied on highly challenging images.
机译:作为文化遗产领域的有吸引力的应用领域,近年来古代硬币的自动分析一直吸引了计算机视觉社区的越来越多的研究关注。最近的工作表明,当应用于在现实条件下获得的图像上时,现有技术的表现非常糟糕。这一原因之一在于许多所提出的算法的(通常隐含的)假设 - 缺乏背景杂波,以及跨不同图像的硬币的均匀规模,方向和翻译。默认情况下,这些假设不满足,并且在制造更复杂分析的领域的任何进一步进展之前,需要一种能够预处理和正常化“野外”所获取的硬币图像的鲁棒方法。在本文中,我们介绍一种能够定位和精确地分割由业余收集器获取的杂乱图像的硬币定位和精确地分割硬币的算法。具体地,我们提出了一种两个阶段方法,首先使用简单的形状假设来大致地将硬币定位,然后通过从大量数据中学到的统计模型来改进该初始估计来实现最终的准确结果。我们对“野外”的数据的结果表明,即使在高度具有挑战性的图像上应用所提出的算法,也表现出优异的准确性。

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