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Deep learning-based automatic volumetric damage quantification using depth camera

机译:使用深度相机进行基于深度学习的体积损伤自动量化

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摘要

A depth camera or 3-dimensional scanner was used as a sensor for traditional methods to quantify the identified concrete spalling damage in terms of volume. However, to quantify the concrete spalling damage automatically, the first step is to detect (i.e., identify) the concrete spalling. The multiple spots of spalling can be possible within a single structural element or in multiple structural elements. However, there is, as of yet, no method to detect concrete spalling automatically using deep learning methods. Therefore, in this paper, a faster region-based convolutional neural network (Faster R-CNN)-based concrete spalling damage detection method is proposed with an inexpensive depth sensor to quantify multiple instances of spalling simultaneously in the same surface separately and consider multiple surfaces in structural elements. A database composed of 1091 images (with 853 x 1440 pixels) labeled for volumetric damage is developed, and the deep learning network is then modified, trained, and validated using the proposed database. The damage quantification is automatically performed by processing the depth data, identifying surfaces, and isolating the damage after merging the output from the Faster R-CNN with the depth stream of the sensor. The trained Faster R-CNN presented an average precision (AP) of 90.79%. Volume quantifications show a mean precision error (MPE) of 9.45% when considering distances from 100 cm to 250 cm between the element and the sensor. Also, an MPE of 3.24% was obtained for maximum damage depth measurements across the same distance range.
机译:深度相机或3维扫描仪被用作传统方法的传感器,以量化确定的混凝土剥落损伤的体积。但是,为了自动量化混凝土剥落破坏,第一步是检测(即识别)混凝土剥落。在单个结构元件中或在多个结构元件中可能有多个剥落点。但是,到目前为止,还没有使用深度学习方法自动检测混凝土剥落的方法。因此,本文提出了一种基于快速区域卷积神经网络(Faster R-CNN)的混凝土剥落损伤检测方法,该方法使用廉价的深度传感器来分别量化同一表面上的多个剥落实例并考虑多个表面在结构元素上。开发了一个数据库,该数据库包含标记为体积损坏的1091张图像(具有853 x 1440像素),然后使用提出的数据库对深度学习网络进行修改,训练和验证。将Faster R-CNN的输出与传感器的深度流合并后,通过处理深度数据,识别表面并隔离损伤来自动执行损伤量化。训练有素的Faster R-CNN表现出90.79%的平均精度(AP)。当考虑到元件与传感器之间100 cm至250 cm的距离时,体积定量显示的平均精度误差(MPE)为9.45%。同样,对于相同距离范围内的最大损伤深度测量,获得的MPE为3.24%。

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