基于卷积神经网络的油漆表面单光和多光图像的裂纹检测

T. Dulecha, Andrea Giachetti, R. Pintus, I. Ciortan, A. Villanueva, E. Gobbetti
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引用次数: 5

摘要

裂缝对油漆表面来说是迫在眉睫的危险,需要在退化成更严重的老化效应(如变色)之前警惕。因此,从绘画表面图像中自动检测裂缝对艺术品保护人员非常有用;然而,传统的图像处理方法无法有效地检测出它们,并将它们与其他线条或表面特征区分开来。提高裂纹检测质量的一个可能的解决方案是利用多光图像集(MLIC),由于反射变换成像(RTI)技术的普及,这些图像集通常在文化遗产领域获得,从而实现艺术品表面的低成本和丰富的数字化。在本文中,我们提出了一个从多光图像中检测蛋彩画裂纹的管道,该管道也可以用于单个图像。该方法基于单光或多光边缘检测和自定义卷积神经网络,该网络能够将边缘点周围的图像斑块分类为裂纹或非裂纹,并在RTI数据上进行训练。将该方法应用于MLIC上,可以很好地对裂纹区域进行分类。在单个图像上使用,它仍然可以给出合理的结果。通过对不同照明方向的性能分析,得出了最佳照明方向。•计算方法→分类监督学习;交叉验证;•应用计算机→美术;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crack Detection in Single- and Multi-Light Images of Painted Surfaces using Convolutional Neural Networks
Cracks represent an imminent danger for painted surfaces that needs to be alerted before degenerating into more severe aging effects, such as color loss. Automatic detection of cracks from painted surfaces’ images would be therefore extremely useful for art conservators; however, classical image processing solutions are not effective to detect them, distinguish them from other lines or surface characteristics. A possible solution to improve the quality of crack detection exploits Multi-Light Image Collections (MLIC), that are often acquired in the Cultural Heritage domain thanks to the diffusion of the Reflectance Transformation Imaging (RTI) technique, allowing a low cost and rich digitization of artworks’ surfaces. In this paper, we propose a pipeline for the detection of crack on egg-tempera paintings from multi-light image acquisitions and that can be used as well on single images. The method is based on single or multi-light edge detection and on a custom Convolutional Neural Network able to classify image patches around edge points as crack or non-crack, trained on RTI data. The pipeline is able to classify regions with cracks with good accuracy when applied on MLIC. Used on single images, it can give still reasonable results. The analysis of the performances for different lighting directions also reveals optimal lighting directions. CCS Concepts • Computing methodologies → Supervised learning by classification; Cross-validation; • Applied computing → Fine arts;
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