...
首页> 外文期刊>Automation in construction >Attention-guided analysis of infrastructure damage with semi-supervised deep learning
【24h】

Attention-guided analysis of infrastructure damage with semi-supervised deep learning

机译:半监督深度学习的基础设施损伤的关注分析

获取原文
获取原文并翻译 | 示例
           

摘要

Routine visual inspection is essential to maintain adequate safety and serviceability of civil infrastructures. Computer vision and machine learning based software techniques are becoming recognized methods that can potentially help the inspectors analyze the physical and functional condition of infrastructures from images and/ or videos of the region of interest. More recently, deep learning approaches have been shown robust in identifying damages; yet these methods require precisely labeled large amount of training data for high accuracy complementary to visual assessment of inspectors. Especially in image segmentation operations, in which damages are subtracted from the image background for further analysis, there is a strong need to localize the damaged region prior to segmentation operation. However, available segmentation methods mostly focus on the latter step (i.e., delineation), and mis-localization of damaged regions causes accuracy drops. Inspired by the superiority of human cognitive system, where recognizing objects is simpler and more efficient than machine learning algorithms, which are superior to human in local tasks, this paper describes a novel method to dramatically improve the accuracy of the damage quantification (detection + segmentation) using an attentionguided technique. In the proposed method, a fast object detection model, Single Shot Detector (SSD) trained on VGG-16 base classifier architecture, performs a real-time crack and spall detection while working interactively with the human inspector to ensure recognition of the region of interest is well-performed. Upon the inspector?s verification, happening in real-time, the detected damage region is used for damage segmentation for further analysis. This initial region of interest selection drastically lowers the computational cost, required amount of training data and reduces number of outliers. For optimal performance, a modified version of SegNet architecture was used for damage segmentation. Based on various performance criteria, the proposed attention-guided infrastructure damage analysis technique provides 30% more precision with a very minor sacrifice in computational speed compared to analysis without using attention guide.
机译:常规视觉检查对于维持民事基础设施的充分安全性和可维护性至关重要。基于计算机视觉和机器学习的软件技术正在成为公认的方法,可以帮助检查员分析来自感兴趣区域的图像和/或视频的基础设施的物理和功能状况。最近,在识别损害方面已经表明了深度学习方法;然而,这些方法需要精确标记大量培训数据,以获得对视察员的视觉评估的高精度互补。特别是在图像分割操作中,其中从图像背景中减去损坏以进一步分析,在分割操作之前,有强需要定位受损区域。然而,可用的分割方法主要关注后一步(即,描绘),并且受损区域的错误定位导致精度下降。受到人类认知系统的优越性的影响,其中识别物体比机器学习算法更简单,更有效,这篇论文描述了一种大大提高损伤量化精度的新方法(检测+分段)使用注意力的技术。在所提出的方法中,在VGG-16基本分类器架构上培训的快速物体检测模型,单次检测器(SSD),在与人类检查员交互式地工作的同时执行实时裂缝和SPALL检测,以确保对感兴趣区域的识别是良好的。在检查员验证时,实时发生,检测到的损伤区域用于损伤分割以进行进一步分析。这个初始感兴趣的区域的初始区域大大降低了计算成本,所需的训练量,并减少了异常值的数量。为了最佳性能,使用修改版本的Segnet架构用于损伤分段。基于各种绩效标准,提出的注意力导向基础设施损坏分析技术在不使用注意指南的情况下,在计算速度下,在计算速度非常轻微的精度提供了30%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号