Detecting Personal Protective Equipment in images and video streams is a relevant problem in ensuring the safety of construction workers. In this contribution, an architecture enabling live image recognition of such equipment is proposed. The solution is deployable in two settings -- edge-cloud and edge-only. The system was tested on an active construction site, as a part of a larger scenario, within the scope of the ASSIST-IoT H2020 project. To determine the feasibility of the edge-only variant, a model for counting people wearing safety helmets was developed using the YOLOX method. It was found that an edge-only deployment is possible for this use case, given the hardware infrastructure available on site. In the preliminary evaluation, several important observations were made, that are crucial to the further development and deployment of the system. Future work will include an in-depth investigation of performance aspects of the two architecture variants.
翻译:在图像和视频流中检测个人防护设备是保证建筑工人安全的一个相关问题,在这一贡献中,提议了一种使此类设备能够现场图像识别的结构。解决方案可以在两个环境 -- -- 边缘云和仅边缘 -- -- 部署。该系统在ASSISST-IoT H2020项目范围内,作为较大设想方案的一部分,在一个运行中的建筑工地进行了测试。为了确定仅靠边线的变式的可行性,利用YOLOX方法开发了一个计算佩戴安全头盔的人的模型。发现,鉴于现场的硬件基础设施,这一用法可以只进行边缘部署。在初步评估中,提出了几项重要意见,这对系统的进一步发展和部署至关重要。未来工作将包括深入研究两个结构变式的性能方面。