论文标题
桥梁注射中的每像素分类钢筋钢筋暴露
Per-pixel Classification Rebar Exposures in Bridge Eye-inspection
论文作者
论文摘要
自完成以来有50年的民用基础设施需要有效的检查和准确的诊断。特别是在市政当局中,技术人员的短缺和维修费用预算限制已成为一个关键问题。如果我们还可以从检查记录的记录中自动检测到损坏的照片,除了对眼睛吸引视觉的5步判断和对策分类,那么我们是否需要更灵活地提供对策信息,无论我们是否需要维修以及造成损害兴趣的大小。只要不围绕损坏(正是拍照目标的范围),一张损坏照片通常很少,最多只有1%。一般而言,经常发生钢筋暴露,并且有很多机会来判断维修措施。在本文中,我们提出了三种传输学习的损害检测方法,该方法可以使用人类眼睛检查的损坏的照片在图像中具有语义分割。另外,我们尝试从头开始创建一个深卷积网络,并在生成旋转的随机作物的预处理中。实际上,我们显示了使用106个现实世界中的208钢筋暴露图像应用的结果。最后,提到了未来的伤害检测模型。
Efficient inspection and accurate diagnosis are required for civil infrastructures with 50 years since completion. Especially in municipalities, the shortage of technical staff and budget constraints on repair expenses have become a critical problem. If we can detect damaged photos automatically per-pixels from the record of the inspection record in addition to the 5-step judgment and countermeasure classification of eye-inspection vision, then it is possible that countermeasure information can be provided more flexibly, whether we need to repair and how large the expose of damage interest. A piece of damage photo is often sparse as long as it is not zoomed around damage, exactly the range where the detection target is photographed, is at most only 1%. Generally speaking, rebar exposure is frequently occurred, and there are many opportunities to judge repair measure. In this paper, we propose three damage detection methods of transfer learning which enables semantic segmentation in an image with low pixels using damaged photos of human eye-inspection. Also, we tried to create a deep convolutional network from scratch with the preprocessing that random crops with rotations are generated. In fact, we show the results applied this method using the 208 rebar exposed images on the 106 real-world bridges. Finally, future tasks of damage detection modeling are mentioned.