Visual Inspection of Collective Protection Equipment Conditions with Mobile Deep Learning Models

B. Ferreira, B. Lima, Tiago F. Vieira
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Abstract

: Even though Deep Learning models are presenting increasing popularity in a variety of scenarios, there are many demands to which they can be specifically tuned to. We present a real-time, embedded system capable of performing the visual inspection of Collective Protection Equipment conditions such as fire extinguishers (presence of rust or disconnected hose), emergency lamp (disconnected energy cable) and horizontal and vertical signalization, among others. This demand was raised by a glass-manufacturing company which provides devices for optical-fiber solutions. To tackle this specific necessity, we collected and annotated a database with hundreds of in-factory images and assessed three different Deep Learning models aiming at evaluating the trade-off between performance and processing time. A real-world application was developed with potential to reduce time and costs of periodic inspections of the company’s security installations.
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基于移动深度学习模型的集体防护装备状态目视检测
尽管深度学习模型在各种场景中越来越受欢迎,但它们可以专门针对许多需求进行调整。我们提出了一种实时嵌入式系统,能够对集体保护设备的状况进行目视检查,例如灭火器(存在生锈或断开的软管),应急灯(断开的能源电缆)以及水平和垂直信号等。这一需求是由一家为光纤解决方案提供设备的玻璃制造公司提出的。为了解决这个特定的需求,我们收集并注释了一个包含数百个工厂内图像的数据库,并评估了三种不同的深度学习模型,旨在评估性能和处理时间之间的权衡。开发了一个真实世界的应用程序,它有可能减少定期检查公司安全装置的时间和成本。
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