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Design and Development of an Internet of Smart Cameras Solution for Complex Event Detection in COVID-19 Risk Behaviour Recognition

机译:Covid-19风险行为识别中复杂事件检测的智能摄像机解决方案的设计与开发

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摘要

Emerging deep learning (DL) approaches with edge computing have enabled the automation of rich information extraction, such as complex events from camera feeds. Due to the low speed and accuracy of object detection, some objects are missed and not detected. As objects constitute simple events, missing objects result in missing simple events, thus the number of detected complex events. As the main objective of this paper, an integrated cloud and edge computing architecture was designed and developed to reduce missing simple events. To achieve this goal, we deployed multiple smart cameras (i.e., cameras which connect to the Internet and are integrated with computerised systems such as the DL unit) in order to detect complex events from multiple views. Having more simple events from multiple cameras can reduce missing simple events and increase the number of detected complex events. To evaluate the accuracy of complex event detection, the F-score of risk behaviour regarding COVID-19 spread events in video streams was used. The experimental results demonstrate that this architecture delivered 1.73 times higher accuracy in event detection than that delivered by an edge-based architecture that uses one camera. The average event detection latency for the integrated cloud and edge architecture was 1.85 times higher than that of only one camera. However, this finding was insignificant with regard to the current case study. Moreover, the accuracy of the architecture for complex event matching with more spatial and temporal relationships showed significant improvement in comparison to the edge computing scenario. Finally, complex event detection accuracy considerably depended on object detection accuracy. Regression-based models, such as you only look once (YOLO), were able to provide better accuracy than region-based models.
机译:具有边缘计算的新兴深度学习(DL)方法使得丰富的信息提取自动化,例如来自相机馈送的复杂事件。由于对象检测的速度低,准确性,一些物体被遗漏而未检测到。随着对象构成简单事件,缺少对象导致缺少的简单事件,因此检测到的复杂事件的数量。作为本文的主要目标,设计并开发了一个集成的云和边缘计算架构,以减少缺少的简单事件。为了实现这一目标,我们部署了多个智能摄像头(即,连接到因特网的摄像机,并与诸如DL单元的计算机化系统集成),以便从多个视图中检测复杂的事件。具有来自多个摄像机的更简单的事件可以减少缺少的简单事件并增加检测到的复杂事件的数量。为了评估复杂事件检测的准确性,使用了关于视频流中的CoVID-19传播事件的风险行为的F评分。实验结果表明,该架构在事件检测中提供了比使用一个摄像机的边缘架构的更高精度的1.73倍。集成云和边缘架构的平均事件检测延迟比仅一个摄像机高的1.85倍。然而,在目前的案例研究方面,这一发现是微不足道的。此外,与更高空间和时间关系的复杂事件匹配的架构的准确性显示与边缘计算场景相比的显着改进。最后,复杂的事件检测精度显着依赖于物体检测精度。基于回归的模型,例如您只看一次(YOLO),能够提供比基于地区的模型更好的精度。

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