The cultural heritage buildings (CHB), which are part of mankind's history and identity, are in constant danger of damage or in extreme situations total destruction. That being said, it's of utmost importance to preserve them by identifying the existent, or presumptive, defects using novel methods so that renovation processes can be done in a timely manner and with higher accuracy. The main goal of this research is to use new deep learning (DL) methods in the process of preserving CHBs (situated in Iran); a goal that has been neglected especially in developing countries such as Iran, as these countries still preserve their CHBs using manual, and even archaic, methods that need direct human supervision. Having proven their effectiveness and performance when it comes to processing images, the convolutional neural networks (CNN) are a staple in computer vision (CV) literacy and this paper is not exempt. When lacking enough CHB images, training a CNN from scratch would be very difficult and prone to overfitting; that's why we opted to use a technique called transfer learning (TL) in which we used pre-trained ResNet, MobileNet, and Inception networks, for classification. Even more, the Grad-CAM was utilized to localize the defects to some extent. The final results were very favorable based on those of similar research. The final proposed model can pave the way for moving from manual to unmanned CHB conservation, hence an increase in accuracy and a decrease in human-induced errors.
翻译:人类历史和特性的一部分文化遗产建筑(CHB),是人类历史和特性的一部分,在人类历史和特性的错误中,始终处于不断遭受破坏的危险或极端情况下完全毁坏。 也就是说,通过使用新颖方法查明其存在或推定缺陷,从而能够及时、更准确地完成翻新过程,保存这些缺陷至关重要。 这项研究的主要目标是在保存CHB(伊朗的情况)的过程中使用新的深层次学习(DL)方法;特别是在伊朗这样的发展中国家,一个一直被忽视的目标,因为这些国家仍然使用人工、甚至古老的方法来保存其CHB,这需要直接的人类监督。在处理图像时,已经证明了它们的有效性和性能,革命神经网络(CNN)是计算机视觉(CV)扫盲的主要支柱,而本文是不可免除的。如果没有足够的CHB图像,那么对CNN的刮痕训练将非常困难和容易过度;这就是为什么我们选择使用一种叫做转移学习的技术,即我们用事先训练的ResNet、移动网络和感官网络的精确性方法来保存这些技术。 在GRA中, 利用了一种最终的模型, 将这种精密性网络,甚至利用了一种精准的机变的机变的逻辑网络,可以用来分类。</s>