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DeepClass: Edge Based Class Occupancy Detection Aided by Deep Learning and Image Cropping

机译:DeepClass:深度学习和图像裁剪辅助的基于边缘的类占用检测

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摘要

Detecting people's presence, monitoring their flows, and their activities, counting how many persons are in a specific place can be strategic goals in different contexts, providing useful insights for different purposes, including those ones related to the management of staying quality in indoor environments. In particular, having information about the actual and current occupancy of a specific room, in specific hours, could be strategic in providing interesting and helpful information for smart building management. In fact, this information could be needed to adequately set the Heat, Ventilation and Air Conditioning (HVAC). the alarm, the lighting systems, and other management issues also. In this context, the Internet of Things paradigm, together with the diffusion of the availability of sensors and smart objects, can provide significant support in monitoring and detecting daily life activities in various situations. Moreover, advancements and specific analysis in image processing can play a strategic role in guaranteeing and improving accuracy, whenever cameras are involved in these situations, to get pictures from the monitored environments.In this paper, we present a people counting approach we have defined and adopted to monitor persons' presence in smart campus classrooms, which is based on the use of cameras and Raspberry Pi platforms. Such an approach has been improved thanks to specific image processing strategies, to be generalized and adopted in different indoor environments, without the need for a specific training phase. The paper presents some evaluation tests we have conducted, showing the accuracy of our approach.
机译:在不同情况下,检测人们的存在,监控他们的活动和活动,计算特定地点的人数可能是不同背景下的战略目标,可为不同目的提供有用的见解,包括与室内环境保持质量管理相关的见解。特别是,在特定时间内拥有有关特定房间的实际和当前占用情况的信息,对于为智能建筑管理提供有趣且有用的信息可能具有战略意义。实际上,可能需要此信息来充分设置热量,通风和空调(HVAC)。警报,照明系统和其他管理问题。在这种情况下,物联网范例以及传感器和智能对象可用性的普及,可以为监视和检测各种情况下的日常生活提供重要支持。此外,只要涉及相机,在图像处理方面的进步和特定分析就可以在确保和提高准确性方面发挥战略性作用,以便从受监控的环境中获取图片。通过使用摄像头和Raspberry Pi平台来监控人们在智能校园教室中的存在。这种方法由于特定的图像处理策略而得到了改进,可以在不同的室内环境中进行推广和采用,而无需特定的培训阶段。本文介绍了我们进行的一些评估测试,表明了我们方法的准确性。

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