Raimondo Francesco, De Rango Floriano, Spezzano Giandomenico
Dimes, University of Calabria, Via P. Bucci 42c, 87036 Rende, Italy.
National Research Council of Italy, Via P. Bucci 8-9c, 87036 Rende, Italy.
Procedia Comput Sci. 2023;220:218-225. doi: 10.1016/j.procs.2023.03.030. Epub 2023 Apr 17.
With the rise of the Internet of Things (IoT) architectures and protocols, new video analytics systems and surveillance applications have been developed. In conventional systems, all the streams produced by cameras are sent to a centralized node where they can be seen by human operators whose task is to identify uncommon on abnormal situations. However, this way, much bandwidth is necessary for the system to work, and the number of necessary resources is proportional to the number of cameras and streams involved. In this paper, we propose an interesting approach to this problem: transforming any IP camera into a cognitive object. A cognitive camera (CC) can be considered a classic connected camera with onboard computational power for intelligent video processing. A CC can understand and interact with the surroundings, intelligently analyze complex scenes, and interact with the users. The IoT Edge Computing approach decreases latency in the decision-making process and consumes a tiny portion of bandwidth concerning the stream of a video, even in low resolution. CCs can help to address COVID-19. As a preventive measure, proper crowd monitoring and management systems must be installed in public places to limit sudden outbreaks and improve healthcare. The number of new infections can be significantly reduced by adopting physical distancing measures earlier. Motivated by this notion, a real-time crowd monitoring and management system for physical distance classification using CCs is proposed in this research paper. The experiment on Movidius board, an AI accelerator device, provides promising results of our proposed method in which the accuracies can achieve more than 85% from different datasets.
随着物联网(IoT)架构和协议的兴起,新的视频分析系统和监控应用得以开发。在传统系统中,摄像机产生的所有视频流都被发送到一个集中节点,在那里人类操作员可以查看这些视频流,其任务是识别异常情况。然而,通过这种方式,系统运行需要大量带宽,并且所需资源的数量与所涉及的摄像机和视频流的数量成正比。在本文中,我们针对这个问题提出了一种有趣的方法:将任何IP摄像机转变为一个认知对象。认知摄像机(CC)可以被视为一个具有板载计算能力以进行智能视频处理的经典联网摄像机。一个CC能够理解周围环境并与之交互,智能地分析复杂场景,并与用户进行交互。物联网边缘计算方法减少了决策过程中的延迟,并且即使在低分辨率情况下,对于视频流而言也只消耗极少一部分带宽。CC有助于应对新冠疫情。作为一项预防措施,必须在公共场所安装适当的人群监测和管理系统,以限制疫情突然爆发并改善医疗保健。通过尽早采取保持社交距离的措施,可以显著减少新感染病例的数量。受这一理念的启发,本文提出了一种使用CC进行物理距离分类的实时人群监测和管理系统。在人工智能加速器设备Movidius板上进行的实验为我们提出的方法提供了有前景的结果,其中在不同数据集上准确率可以达到85%以上。