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Non- invasive thermal sensation recognition based on human behavior postures in office environment

2022 41st Chinese Control Conference (CCC)(2022)

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摘要
As an important part of intelligent environmental control, human thermal sensation prediction can not only improve human thermal comfort and work efficiency, but also help promote building energy efficiency. In this paper, a database of thermal adaptive actions is established according to thermal response of human body in the office environment. A key frame extraction algorithm is proposed based on the temporal and spatial characteristics of human skeleton data. The feature data of key frames is input into the bi-directional long short-term memory (Bi-LSTM) neural network model for thermal comfort state recognition. Results show that for seven-category thermal sensation recognition, the accuracy of proposed model achieves 86.9%, which demonstrates the feasibility of the camera-based non-invasive identification method.
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关键词
Skeleton data,thermal adaptive action,key frames,Bi-LSTM,office environment
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