In recent years, a lot of attention is paid to deep learning methods in the context of vision-based construction site safety systems, especially regarding personal protective equipment. However, despite all this attention, there is still no reliable way to establish the relationship between workers and their hard hats. To answer this problem a combination of deep learning, object detection and head keypoint localization, with simple rule-based reasoning is proposed in this article. In tests, this solution surpassed the previous methods based on the relative bounding box position of different instances, as well as direct detection of hard hat wearers and non-wearers. The results show that the conjunction of novel deep learning methods with humanly-interpretable rule-based systems can result in a solution that is both reliable and can successfully mimic manual, on-site supervision. This work is the next step in the development of fully autonomous construction site safety systems and shows that there is still room for improvement in this area.
翻译:近年来,在基于愿景的建筑工地安全系统中,对深层次的学习方法,尤其是个人防护设备,给予了很多关注,然而,尽管如此,仍然没有可靠的方法来建立工人与其硬帽之间的关系。要解决这个问题,必须结合深层次的学习、物体探测和头等关键点定位,并在此篇文章中提出简单的基于规则的推理。在测试中,这一解决方案超过了以前基于不同情况相对捆绑箱位置的方法,以及直接探测硬帽穿戴者和非穿戴者的方法。结果显示,新颖的深层次学习方法与人类可解释的基于规则的系统相结合,可以产生一种既可靠又能成功模仿手动、现场监督的解决办法。这项工作是发展完全自主的建筑工地安全系统的下一步,并表明这方面仍有改进的余地。