This study develops a framework for unmanned aerial systems (UASs) to monitor fall hazard prevention systems near unprotected edges and openings in high-rise building projects. A three-step machine-learning-based framework was developed and tested to detect guardrail posts from the images captured by UAS. First, a guardrail detector was trained to localize the candidate locations of posts supporting the guardrail. Since images were used in this process collected from an actual job site, several false detections were identified. Therefore, additional constraints were introduced in the following steps to filter out false detections. Second, the research team applied a horizontal line detector to the image to properly detect floors and remove the detections that were not close to the floors. Finally, since the guardrail posts are installed with approximately normal distribution between each post, the space between them was estimated and used to find the most likely distance between the two posts. The research team used various combinations of the developed approaches to monitor guardrail systems in the captured images from a high-rise building project. Comparing the precision and recall metrics indicated that the cascade classifier achieves better performance with floor detection and guardrail spacing estimation. The research outcomes illustrate that the proposed guardrail recognition system can improve the assessment of guardrails and facilitate the safety engineer's task of identifying fall hazards in high-rise building projects.
翻译:这项研究开发了无人驾驶航空系统(无人驾驶航空系统)框架,以监测在无人保护的边缘附近和高层建筑项目露天露天的危害预防系统; 开发并测试了一个三步机器学习框架,以从无人保护系统所摄图像中探测出卫兵哨所。 首先,培训了一名护航机探测器,以将支持护航的哨所的候选地点本地化; 由于从实际工作地点收集到的图像在这一过程中使用了几个假检测,因此在过滤虚假检测的以下步骤中增加了额外的限制; 其次,研究小组在图像上应用了水平线探测器,以适当探测地面,并去除不靠近地面的探测。最后,由于每个哨所安装了大致正常分布的卫警哨所,因此估计并使用了这两个哨所之间的空间,以找到这两个哨所之间最可能存在的距离。 研究小组使用了各种组合,以监测从一个高层建筑项目采集的图像中的卫兵系统。 比较精确度和回顾的测量指标表明,级叙级探测器在图像上取得了更好的业绩,可以确定地面探测和防护舱间距的高度估计。