基于表面微观几何的文物样本老化预测

I. Ciortan, G. Marchioro, C. Daffara, R. Pintus, E. Gobbetti, Andrea Giachetti
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引用次数: 1

摘要

文化遗产(CH)资产研究的一个关键和具有挑战性的方面与构成它们的材料的特征以及这些材料随时间的变化有关。在本文中,我们利用人工老化金属样品的真实数据集,这些金属样品经过不同的涂层处理,通常用于艺术品的保护,以评估从高分辨率深度图中提取材料特征的不同方法。特别是,我们估计了在不同老化步骤下样品的微轮廓表面采集,材料科学中使用的标准粗糙度描述符以及经典和最新的图像纹理描述符。我们分析了特征区分不同老化步骤的能力,并进行了监督分类测试,证明了基于纹理的老化分析的可行性,以及涂层在减少表面随时间变化方面的有效性。•计算方法→机器学习方法;神经网络;•应用计算机→艺术与人文;•一般和参考→指标;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aging Prediction of Cultural Heritage Samples Based on Surface Microgeometry
A critical and challenging aspect for the study of Cultural Heritage (CH) assets is related to the characterization of the materials that compose them and to the variation of these materials with time. In this paper, we exploit a realistic dataset of artificially aged metallic samples treated with different coatings commonly used for artworks’ protection in order to evaluate different approaches to extract material features from high-resolution depth maps. In particular, we estimated, on microprofilometric surface acquisitions of the samples, performed at different aging steps, standard roughness descriptors used in materials science as well as classical and recent image texture descriptors. We analyzed the ability of the features to discriminate different aging steps and performed supervised classification tests showing the feasibility of a texture-based aging analysis and the effectiveness of coatings in reducing the surfaces’ change with time. CCS Concepts •Computing methodologies → Machine learning approaches; Neural networks; •Applied computing → Arts and humanities; •General and reference → Metrics;
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