Ceramic Fabric Classification of Petrographic Thin Sections with Deep Learning

Q1 Social Sciences Journal of Computer Applications in Archaeology Pub Date : 2021-09-28 DOI:10.5334/jcaa.75
Mike Lyons
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引用次数: 1

Abstract

Classification of ceramic fabrics has long held a major role in archaeological pursuits. It helps answer research questions related to ceramic technology, provenance, and exchange and provides an overall deeper understanding of the ceramic material at hand. One of the most effective means of classification is through petrographic thin section analysis. However, ceramic petrography is a difficult and often tedious task that requires direct observation and sorting by domain experts. In this paper, a deep learning model is built to automatically recognize and classify ceramic fabrics, which expedites the process of classification and lessens the requirements on experts. The samples consist of images of petrographic thin sections under cross-polarized light originating from the Cocal-period (AD 1000–1525) archaeological site of Guadalupe on the northeast coast of Honduras. Two convolutional neural networks (CNNs), VGG19 and ResNet50, are compared against each other using two approaches to partitioning training, validation, and testing data. The technique employs a standard transfer learning process whereby the bottom layers of the CNNs are pre-trained on the ImageNet dataset and frozen, while a single pooling layer and three dense layers are added to ‘tune’ the model to the thin section dataset. After selecting fabric groups with at least three example sherds each, the technique can classify thin section images into one of five fabric groups with over 93% accuracy in each of four tests. The current results indicate that deep learning with CNNs is a highly accessible and effective method for classifying ceramic fabrics based on images of petrographic thin sections and that it can likely be applied on a larger scale.
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基于深度学习的岩石薄片陶瓷织物分类
陶瓷织物的分类长期以来一直在考古活动中发挥着重要作用。它有助于回答与陶瓷技术、产地和交流相关的研究问题,并对手头的陶瓷材料有更深入的全面了解。最有效的分类方法之一是通过岩相薄片分析。然而,陶瓷岩石学是一项困难且往往乏味的任务,需要领域专家的直接观察和分类。本文建立了一个深度学习模型来自动识别和分类陶瓷织物,加快了分类过程,降低了对专家的要求。这些样本由洪都拉斯东北海岸瓜达卢佩科卡尔时期(公元1000–1525年)考古遗址在交叉偏振光下的岩相薄片图像组成。使用两种划分训练、验证和测试数据的方法,对两种卷积神经网络(CNNs)VGG19和ResNet50进行了比较。该技术采用了一个标准的迁移学习过程,即在ImageNet数据集上预训练并冻结细胞神经网络的底层,同时添加一个池化层和三个密集层,以将模型“调整”到薄截面数据集。在选择每个至少有三个示例碎片的织物组后,该技术可以将薄片图像分类为五个织物组中的一个,在四个测试中的每一个测试中,准确率都超过93%。目前的结果表明,使用细胞神经网络的深度学习是一种基于岩相薄片图像对陶瓷织物进行分类的高度可访问和有效的方法,并且它可能会在更大范围内应用。
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来源期刊
CiteScore
5.50
自引率
0.00%
发文量
12
审稿时长
19 weeks
期刊最新文献
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