Non-Destructive Assessment of Stone Heritage Weathering Types Based on Machine Learning Method Using Hyperspectral Data

Xin Wang, Yuan Cheng, Ruoyu Zhang, Yue Zhang, Jizhong Huang, Hongbin Yan
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Abstract

Abstract. Stone cultural heritage is exposed to various environments, resulting in a diverse range of weathering types. The identification of these weathering types is vital for targeted conservation efforts. In this paper, a weathering type classification method based on hyperspectral imaging technology is proposed. Firstly, fresh sandstones are collected from Yungang Grottoes to carry out the simulated weathering experiments, including freeze-thaw cycles and wet-dry cycles with acid, alkali and salt solutions. Subsequently, the hyperspectral imaging system was used to collect the visible-near-infrared (VNIR) and short-wave infrared (SWIR) images of the sandstone samples with different weathering types and degrees. The surface spectral reflectance of sandstone samples with different weathering types were used as training data, with weathering types serving as the labels. Support vector machine (SVM), K-nearest neighbour (KNN), linear discriminant analysis (LDA) and random forest (RF) were used to establish weathering type classification models. The results show that the SVM model and LDA model based on both VNIR and SWIR spectra exhibit outstanding performance, with a best accuracy of 0.994. The framework proposed in this paper facilitates rapid and non-contact assessment of the weathering types of the superficial layers of stone cultural heritage, thereby supporting more targeted conservation work.
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基于机器学习方法的石质遗产风化类型非破坏性评估--使用高光谱数据
摘要。石质文化遗产暴露在各种环境中,形成了多种多样的风化类型。识别这些风化类型对于有针对性地开展保护工作至关重要。本文提出了一种基于高光谱成像技术的风化类型分类方法。首先,从云冈石窟采集新鲜砂岩进行模拟风化实验,包括酸、碱、盐溶液的冻融循环和干湿循环。随后,利用高光谱成像系统采集了不同风化类型和程度的砂岩样品的可见光-近红外(VNIR)和短波红外(SWIR)图像。将不同风化类型砂岩样本的表面光谱反射率作为训练数据,风化类型作为标签。采用支持向量机(SVM)、K-近邻(KNN)、线性判别分析(LDA)和随机森林(RF)建立风化类型分类模型。结果表明,基于 VNIR 和 SWIR 光谱的 SVM 模型和 LDA 模型表现出色,最佳准确率为 0.994。本文提出的框架有助于以非接触方式快速评估石质文化遗产表层的风化类型,从而支持更有针对性的保护工作。
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