Abstract

The type of occupant activities is a significantly important factor to determine indoor thermal comfort; thus, an accurate method to estimate occupant activity needs to be developed. The purpose of this study was to develop a deep neural network (DNN) model for estimating the joint location of diverse human activities, which will be used to provide a comfortable thermal environment. The DNN model was trained with images to estimate 14 joints of a person performing 10 common indoor activities. The DNN contained numerous shortcut connections for efficient training and had two stages of sequential and parallel layers for accurate joint localization. Estimation accuracy was quantified using the mean squared error (MSE) for the estimated joints and the percentage of correct parts (PCP) for the body parts. The results show that the joint MSEs for the head and neck were lowest, and the PCP was highest for the torso. The PCP for individual activities ranged from 0.71 to 0.92, while typing and standing in a relaxed manner were the activities with the highest PCP. Estimation accuracy was higher for relatively still activities and lower for activities involving wide-ranging arm or leg motion. This study thus highlights the potential for the accurate estimation of occupant indoor activities by proposing a novel DNN model. This approach holds significant promise for finding the actual type of occupant activities and for use in target indoor applications related to thermal comfort in buildings.

Highlights

  • The indoor environment quality (IEQ) in buildings is related to the quality of life, health, and productivity [1,2,3]

  • The main factors composing the IEQ are classified into thermal comfort, indoor air quality (IAQ), and visual comfort [4,5]

  • The degree of thermal comfort is decided by predicted mean vote (PMV), one of the thermal comfort indices proposed by Fanger [5]

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Summary

Introduction

The indoor environment quality (IEQ) in buildings is related to the quality of life, health, and productivity [1,2,3]. A DNN-based model that estimates the joints location of the occupant for various indoor activities was developed. The developed model is a vital technology for being applied to estimate the actual activity [17,18], and it is believed that the metabolic rate and the PMV of occupants can be calculated based on the estimated indoor activity. This possibility is expected to enable PMV-based environmental control and enhance indoor thermal comfort.

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Analysis
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