基于图像匹配的自动硬币分类

S. Zambanini, M. Kampel
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引用次数: 20

摘要

本文提出了一种基于图像的古钱币自动分类方法,该方法采用近年来提出的SIFT流方法对古钱币图像进行相似性评估。我们的系统不依赖于模式分类,因为鉴别特征提取和分类对于大型硬币数据库变得非常困难。这主要是由于古钱币对基于二维图像的分类方法构成了特殊挑战。在本文中,我们强调了这些挑战,并主张使用SIFT流图像匹配。我们的分类系统应用于包含24种早期罗马共和硬币的图像数据库,并在硬币背面实现了74%的分类率。这是对先前提出的基于兴趣点匹配的硬币匹配方法的重大改进,该方法在相同数据集上仅达到33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Coin Classification by Image Matching
This paper presents an automatic image-based ancient coin classification method that adopts the recently proposed SIFT flow method in order to assess the similarity of coin images. Our system does not rely on pattern classification as discriminative feature extraction and classification becomes very difficult for large coin databases. This is mainly caused by the specific challenges that ancient coins pose to a classification method based on 2D images. In this paper we highlight these challenges and argue to use SIFT flow image matching. Our classification system is applied to an image database containing 24 classes of early Roman Republican coinage and achieves a classification rate of 74% on the coins' reverse side. This is a significant improvement over an earlier proposed coin matching method based on interest point matching which only achieves 33% on the same dataset.
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