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Thermography data fusion and nonnegative matrix factorization for the evaluation of cultural heritage objects and buildings

机译:热成像数据融合与文化遗产和建筑物评估的非负矩阵分解

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摘要

The application of the thermal and infrared technology in different areas of research is considerably increasing. These applications involve nondestructive testing, medical analysis (computer aid diagnosis/detection-CAD), and arts and archeology, among many others. In the arts and archeology field, infrared technology provides significant contributions in terms of finding defects of possible impaired regions. This has been done through a wide range of different thermographic experiments and infrared methods. The proposed approach here focuses on application of some known factor analysis methods such as standard nonnegative matrix factorization (NMF) optimized by gradient-descent-based multiplicative rules (SNMF1) and standard NMF optimized by nonnegative least squares active-set algorithm (SNMF2) and eigen-decomposition approaches such as principal component analysis (PCA) in thermography, and candid covariance-free incremental principal component analysis in thermography to obtain the thermal features. On the one hand, these methods are usually applied as preprocessing before clustering for the purpose of segmentation of possible defects. On the other hand, a wavelet-based data fusion combines the data of each method with PCA to increase the accuracy of the algorithm. The quantitative assessment of these approaches indicates considerable segmentation along with the reasonable computational complexity. It shows the promising performance and demonstrated a confirmation for the outlined properties. In particular, a polychromatic wooden statue, a fresco, a painting on canvas, and a building were analyzed using the above-mentioned methods, and the accuracy of defect (or targeted) region segmentation up to 71.98%, 57.10%, 49.27%, and 68.53% was obtained, respectively.
机译:在不同研究领域中的热和红外技术的应用显着增加。这些应用涉及非破坏性检测,医学分析(计算机辅助诊断/检测CAD),以及艺术和考古学中的许多其他。在本领域,红外技术在找到可能受损地区的缺陷方面提供了重大贡献。这是通过各种不同的热成像实验和红外方法进行的。这里提出的方法侧重于应用一些已知的因子分析方法,例如由基于梯度 - 下降的乘法规则(SNMF1)和标准NMF优化的标准非负矩阵分子(NMF)和由非负最小二乘活动集合算法(SNMF2)和标准NMF优化在热成像中的主要成分分析(PCA)等特征分解方法,以及热成像中的坦率协方差增量主成分分析,以获得热特征。一方面,这些方法通常在聚类之前应用于预处理以进行可能的缺陷的目的。另一方面,基于小波的数据融合将每个方法的数据与PCA相结合,以提高算法的准确性。这些方法的定量评估表明了相当大的分割以及合理的计算复杂性。它显示了有希望的性能,并证明了概述的属性确认。特别地,使用上述方法分析了一种多色木制雕像,壁画,帆布上的涂料以及建筑物,以及缺陷(或靶向)区域细分的准确性高达71.98%,57.10%,49.27%,获得68.53%。

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