首页> 外文会议>Australasian Conference on Robotics and Automation >Evaluation of Vision-based Surface Crack Detection Methods for Underground Mine Tunnel Images
【24h】

Evaluation of Vision-based Surface Crack Detection Methods for Underground Mine Tunnel Images

机译:基于视觉矿井隧道图像的视觉表面裂纹检测方法评价

获取原文

摘要

Safety in underground mines is an important aspect for mining companies. Geological failures such as roof collapse and rockfalls are one of the most fatal safety hazards in an under-ground environment. A way to prevent such hazards is to detect early signs of geological failures and hence implement safety measures. The presence of surface cracks is one of the early signs of a geological failure and the current method of detecting them is by sending a geotechnical engineer to survey underground tunnels. This is a risky operation due to the unpredictable hazards and harsh underground environment. Deploying a remote vehicle at-tached with suitable sensors with the ability to autonomously detect early signs, such will mitigate such risk and also assist geologists to interpret massive amount of data quickly. Several vision-based methods to automatically detect cracks in images can be found in the literature, however, no indication of the performance of such methods in the context of underground mines is available. This paper provides an ex-perimental evaluation of those methods on images collected in a real underground mine. The results show that existing methods perform relatively poorly in this context, indicated by an F1 score ranging between 20% and 63%.
机译:地下矿山的安全是矿业公司的一个重要方面。屋顶塌陷和岩石等地质故障是地面环境中最致命的安全危险之一。防止这种危害的方法是检测地质故障的早期迹象,从而实现安全措施。表面裂缝的存在是地质故障的早期迹象之一,以及当前检测它们的方法是通过向地下隧道发送岩土工程师来调查地下隧道。这是由于不可预测的危险和地下环境,这是一个危险的运作。将远程车辆与合适的传感器一起部署,具有自主检测早期迹象的能力,这将减轻这种风险,并协助地质学家快速解释大量数据。然而,在文献中可以在文献中发现几种基于视觉的方法,以便在文献中找到图像中的裂缝,无需指示在地下矿山的背景下的这种方法的性能。本文提供了在真正地下矿井中收集的图像的那些方法的实际情况评估。结果表明,现有方法在这种情况下表现相对较差,指示的F1分数范围在20%和63%之间。

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