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Deep learning models for vision-based occupancy detection in high occupancy buildings
被引:0
作者:
Zhang, Wuxia
[1
]
Calautit, John
[1
]
Tien, Paige Wenbin
[1
]
Wu, Yupeng
[1
]
Wei, Shuangyu
[2
]
机构:
[1] Univ Nottingham, Dept Architecture & Built Environm, Nottingham NG7 2RD, England
[2] Cardiff Univ, Welsh Sch Architecture, Cardiff CF10 3NB, Wales
来源:
JOURNAL OF BUILDING ENGINEERING
|
2024年
/
98卷
关键词:
Deep learning;
Computer vision;
Energy efficiency;
Building energy simulation;
Occupancy detection;
You Only Look Once (YOLO);
Faster Region-based Convolutional Neural;
Networks (Faster R-CNN);
Single Shot MultiBox Detector (SSD);
OFFICE;
D O I:
10.1016/j.jobe.2024.111355
中图分类号:
TU [建筑科学];
学科分类号:
0813 ;
摘要:
Accurate occupancy information is crucial for enhancing energy efficiency and reducing carbon emissions in buildings. However, the inherent unpredictability of occupants introduces uncertainties in energy analysis and control strategy development. To address these challenges, this study proposes a vision-based method employing state-of-the-art deep learning models to capture real-time occupancy profiles in crowded indoor spaces. Utilising a self-collected image dataset, various deep learning models, including Single Shot MultiBox Detector (SSD), Faster Regionbased Convolutional Neural Networks (Faster R-CNN), and different versions of You Only Look Once (YOLO) were trained and evaluated. An experiment was conducted in a lecture room equipped with cameras and environmental sensors to evaluate the performance of each model in terms of precision, computational efficiency, and adaptability to varying occupancy levels during a lecture session. The session included varying occupancy conditions: entering (barely occupied), during the lecture (typical occupancy), and leaving the room (again barely occupied). Among the models tested, YOLOv8x exhibited the best performance in terms of accuracy, while SSD lagged notably. The impact on the detection performance of various locations of camera setups was also explored. Energy simulations revealed that deep learning-based model generated occupancy profiles significantly deviated from conventional "fixed" occupancy profiles, resulting in a 13.45 % variation in predicted heating energy demand. However, compared to the ground truth, these profiles showed minimal variation (up to 6.72 %) for the Faster R-CNN and YOLO models, highlighting their accuracy and robustness. Additionally, although the deep learning-based occupancy profiles generally overpredicted the recorded data, the CO2 concentration trends they predicted aligned closely with the recorded data, unlike the "fixed" occupancy profiles. The findings underscore the importance of realistic occupancy profiles for reliable energy predictions in buildings and demonstrate the potential of the proposed vision-based method for advancing occupancy detection and building energy management.
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