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Deep Learning for Detecting Building Defects Using Convolutional Neural Networks

机译:使用卷积神经网络检测建筑物缺陷的深度学习

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摘要

Clients are increasingly looking for fast and effective means to quickly and frequently survey and communicate the condition of their buildings so that essential repairs and maintenance work can be done in a proactive and timely manner before it becomes too dangerous and expensive. Traditional methods for this type of work commonly comprise of engaging building surveyors to undertake a condition assessment which involves a lengthy site inspection to produce a systematic recording of the physical condition of the building elements, including cost estimates of immediate and projected long-term costs of renewal, repair and maintenance of the building. Current asset condition assessment procedures are extensively time consuming, laborious, and expensive and pose health and safety threats to surveyors, particularly at height and roof levels which are difficult to access. This paper aims at evaluating the application of convolutional neural networks (CNN) towards an automated detection and localisation of key building defects, e.g., mould, deterioration, and stain, from images. The proposed model is based on pre-trained CNN classifier of VGG-16 (later compaired with ResNet-50, and Inception models), with class activation mapping (CAM) for object localisation. The challenges and limitations of the model in real-life applications have been identified. The proposed model has proven to be robust and able to accurately detect and localise building defects. The approach is being developed with the potential to scale-up and further advance to support automated detection of defects and deterioration of buildings in real-time using mobile devices and drones.
机译:客户越来越多地寻求快速有效的方法来快速且频繁地检查和传达其建筑物的状况,以便可以在其变得过于危险和昂贵之前,主动,及时地进行必要的维修和保养工作。进行此类工作的传统方法通常包括聘请建筑测量师进行条件评估,其中包括进行冗长的现场检查,以系统记录建筑构件的物理状况,包括对建筑物直接或长期成本的估算。建筑物的更新,维修和保养。当前的资产状况评估程序非常耗时,费力且昂贵,并且对测量员构成健康和安全威胁,尤其是在难以接近的高度和屋顶高度。本文旨在评估卷积神经网络(CNN)在自动检测和定位图像中关键建筑物缺陷(例如霉菌,变质和污迹)方面的应用。所提出的模型基于VGG-16的预训练CNN分类器(后来与ResNet-50和Inception模型一起使用),以及用于对象定位的类激活映射(CAM)。已经确定了该模型在实际应用中的挑战和局限性。所提出的模型已被证明是健壮的,并且能够准确地检测和定位建筑缺陷。正在开发这种方法,它有可能扩大规模并进一步发展,以支持使用移动设备和无人机实时自动检测建筑物的缺陷和退化。

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