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Real-time space occupancy sensing and human motion analysis using deep learning for indoor air quality control

机译:实时空间占用感应和人类运动分析对室内空气质量控制的深度学习

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This study proposed a novel indoor air quality control methodology that uses occupancy sensing and motion recognition techniques in combination with human motion analysis. The automated occupancy sensing systems that are most prevalent today analyze either environmental conditions (i.e., room temperature or data from entities in the room, such as states of electronic devices) to make human occupancy predictions. Since little emphasis is placed on observing humans directly, the estimations of these sensing systems are often inaccurate. Erroneous occupancy estimation leads to poor control of building resources such as HVAC (Heating, Ventilation, and Air-conditioning) and lighting systems. To address this issue, the paper puts forth a lean, vision-based system that estimates the number of occupants and recognizes their activities using the stacked history of unconstrained non-deterministic human movements over transient intervals. The system implements a multi-stream deep neural network to identify human activities and uses the YOLO V3 deep neural network for object detection to estimate occupancy count in a room. The study uses a publicly available action recognition dataset - NADA - to train the neural networks and experiment with a variety of video classification techniques to achieve higher accuracies.
机译:该研究提出了一种新颖的室内空气质量控制方法,其使用占用感测和运动识别技术与人类运动分析相结合。今天最普遍的自动占用感测系统分析了环境条件(即,房间中的实体的房间温度或数据,例如电子设备状态)以使人类入住预测。由于直接对人类观察人类来说,因此这些传感系统的估计通常是不准确的。错误的入住估计导致建筑资源(如HVAC(供暖,通风和空调)和照明系统的控制差。为了解决这个问题,该文件提出了一个精益,基于视野的系统,估计占用者的数量,并使用瞬态间隔的无约束非确定性人类运动的堆积历史来认识到他们的活动。该系统实现了一个多流深神经网络,以识别人类活动,并使用YOLO V3深神经网络进行对象检测以估计房间中的占用计数。该研究采用了公开的行动识别数据集 - Nada - 以培训神经网络并用各种视频分类技术进行实验,以实现更高的准确性。

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