Accuracy Analysis of DNN-Based Pose-Categorization Model and Activity-Decision Algorithm

The objective of this study is to develop (1) a pose-categorization model that classifies the poses of an occupant based on their image in an indoor space and (2) an activity-decision algorithm that identifies the activity being performed by the occupant. For developing an automated intelligent mode...

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Bibliographic Details
Published inEnergies (Basel) Vol. 13; no. 4; p. 839
Main Authors Park, Bo Rang, Choi, Eun Ji, Choi, Young Jae, Moon, Jin Woo
Format Journal Article
LanguageEnglish
Published MDPI AG 01.02.2020
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Summary:The objective of this study is to develop (1) a pose-categorization model that classifies the poses of an occupant based on their image in an indoor space and (2) an activity-decision algorithm that identifies the activity being performed by the occupant. For developing an automated intelligent model, a deep neural network is adopted. The model considers the coordinates of the joints of the occupant in the image as input data and returns the pose of the occupant. Datasets composed of indoor images of home and office environments are used for training and testing the model. The training and testing accuracies of the optimized model were 100% for both the home and office environments. A representative activity of an occupant for a certain period has to be decided to control an indoor environment for comfort. The activity-decision algorithm employs a frequency-based method to determine the representative activity type for real-time occupant poses using the pose-categorization model. This study highlights the potential of the developed model and algorithm to determine the activity of occupants to provide an optimal thermal environment corresponding to the individual’s metabolic rate.
ISSN:1996-1073
1996-1073
DOI:10.3390/en13040839