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A Deep Learning Application for Detecting Facade Tile Degradation

机译:一种深入学习应用,用于检测门面瓦片劣化

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Facade tiles of buildings are likely to weaken, crack, or fall off due to aging or out of natural causes such as temperature variations during daytime and nighttime and earthquakes. Tile spalling of tall buildings often leads to accidents or even severe casualties. In view that a routine thorough inspection is costly, this study aims to develop a cost-effective means to detect facade tile degradation of tall buildings through machine learning. We leverage a drone to film outer walls of high-rise buildings at several dozens of sites, from which training data are produced for learning and validation. We resort to a convolutional neural network with deep learning capabilities that is trained with sufficient knowledge to identify hazardous conditions of cracked tiles in two or three levels. Core to our implementation is Jetson TX2--an embedded system--which is programmed in light of AlexNet over Keras and TensorFlow, open-source libraries for deep neural network programming. To heighten learning quality subject to limited amount of training data, image preprocessing involving gray-level transformation, thresholding, and morphological operations is introduced. Experimental results corroborate that our scheme achieves a correct classification rate of over 86%. Our development serves a moderate approach to deep learning in daily contexts, a practical scenario over which to inspire other applications.
机译:由于老化或诸如白天和夜间和地震等温度变化,因此,建筑物的门面瓦片可能会削弱,裂缝或脱落,或者由于温度变化等天然原因。高层建筑的瓷砖剥落经常导致事故甚至严重伤亡。鉴于常规检查成本高昂,该研究旨在通过机器学习制定一种经济效益的方法来检测高层建筑的外立瓷砖劣化。我们利用无人机在几十个地点的高层建筑物的外墙,从中生产用于学习和验证的培训数据。我们求助于卷积神经网络,深入学习能力,具有足够的知识,以识别两三个或三个层次的裂纹瓷砖的危险条件。核心我们的实施是Jetson TX2 - 一个嵌入式系统 - 根据Keras和Tensorflow的alexNet,用于深度神经网络编程的开源库的光线编程。为了提高学习质量,介绍了有限量的训练数据,介绍了涉及灰度变换,阈值和形态操作的图像预处理。实验结果证实了我们的计划实现了正确的分类率超过86%。我们的开发在日常环境中为深度学习提供了适度的深度学习方法,这是一种激励其他应用的实际情景。

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