Anyone here? Smart Embedded Low-Resolution Omnidirectional Video Sensor to Measure Room Occupancy

T. Callemein, Kristof Van Beeck, T. Goedemé
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引用次数: 9

Abstract

In this paper, we present a room occupancy sensing solution with unique properties: (i) It is based on an omnidirectional vision camera, capturing rich scene info over a wide angle, enabling to count the number of people in a room and even their position. (ii) Although it uses a camera-input, no privacy issues arise because its extremely low image resolution, rendering people unrecognisable. (iii) The neural network inference is running entirely on a low-cost processing platform embedded in the sensor, reducing the privacy risk even further. (iv) Limited manual data annotation is needed, because of the self-training scheme we propose. Such a smart room occupancy rate sensor can be used in e.g. meeting rooms and flex-desks. Indeed, by encouraging flex-desking, the required office space can be reduced significantly. In some cases, however, a flex-desk that has been reserved remains unoccupied without an update in the reservation system. A similar problem occurs with meeting rooms, which are often under-occupied. By optimising the occupancy rate a huge reduction in costs can be achieved. Therefore, in this paper, we develop such system which determines the number of people present in office flex-desks and meeting rooms. Using an omnidirectional camera mounted in the ceiling, combined with a person detector, the company can intelligently update the reservation system based on the measured occupancy. Next to the optimisation and embedded implementation of such a self-training omnidirectional people detection algorithm, in this work we propose a novel approach that combines spatial and temporal image data, improving performance of our system on extreme low-resolution images.
有人在这里吗?智能嵌入式低分辨率全方位视频传感器测量房间占用情况
在本文中,我们提出了一种具有独特特性的房间占用传感解决方案:(i)它基于全向视觉摄像机,在广角上捕获丰富的场景信息,可以计算房间内的人数甚至他们的位置。(ii)虽然使用摄像头输入,但由于其图像分辨率极低,使人无法识别,因此不会产生隐私问题。(iii)神经网络推理完全运行在嵌入传感器的低成本处理平台上,进一步降低了隐私风险。(iv)由于我们提出的自训练方案,需要少量的人工数据标注。这种智能房间占用率传感器可用于会议室和弹性办公桌等。事实上,通过鼓励弹性办公桌,所需的办公空间可以大大减少。但是,在某些情况下,已预订的灵活服务台在没有更新预订系统的情况下仍然未被占用。会议室也出现了类似的问题,会议室经常被占用。通过优化入住率,可以实现成本的大幅降低。因此,在本文中,我们开发了这样一个系统来确定办公室弹性办公桌和会议室的人数。通过安装在天花板上的全向摄像头,结合人员探测器,该公司可以根据测量的入住率智能更新预订系统。除了优化和嵌入式实现这种自我训练的全方位人物检测算法之外,在这项工作中,我们提出了一种结合空间和时间图像数据的新方法,提高了我们的系统在极低分辨率图像上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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