Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi
Mask-wearing remains to be one of the primary protective measures against COVID-19. To address the difficulty of manual compliance monitoring, face mask detection models considerate of both frontal and angled faces were developed. This study aimed to test the performance of the said models in classi...
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2023
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ph-ateneo-arc.discs-faculty-pubs-14032024-02-20T04:36:10Z Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi Tarun, Ivan George L. Lopez, Vidal Wyatt M. Serrano, Pamela Anne C. Abu, Patricia Angela R Reyes, Rosula Estuar, Ma. Regina Justina Mask-wearing remains to be one of the primary protective measures against COVID-19. To address the difficulty of manual compliance monitoring, face mask detection models considerate of both frontal and angled faces were developed. This study aimed to test the performance of the said models in classifying multi-face images and upon running on a Raspberry Pi device. The accuracies and inference speeds were measured and compared when inferencing images with one, two, and three faces and on the desktop and the Raspberry Pi. With an increasing number of faces in an image, the models’ accuracies were observed to decline, while their speeds were not significantly affected. Moreover, the YOLOv5 Small model was regarded to be potentially the best model for use on lower resource platforms, as it experienced a 3.33% increase in accuracy and recorded the least inference time of two seconds per image among the models. 2023-01-01T08:00:00Z text application/pdf https://archium.ateneo.edu/discs-faculty-pubs/403 https://archium.ateneo.edu/context/discs-faculty-pubs/article/1403/viewcontent/Paper_105_Performance_Evaluation_of_Face_Mask_Detection.pdf Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo embedded platform Face mask detection multi-face detection Raspberry Pi Computer Engineering Engineering VLSI and Circuits, Embedded and Hardware Systems |
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embedded platform Face mask detection multi-face detection Raspberry Pi Computer Engineering Engineering VLSI and Circuits, Embedded and Hardware Systems Tarun, Ivan George L. Lopez, Vidal Wyatt M. Serrano, Pamela Anne C. Abu, Patricia Angela R Reyes, Rosula Estuar, Ma. Regina Justina Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi |
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Mask-wearing remains to be one of the primary protective measures against COVID-19. To address the difficulty of manual compliance monitoring, face mask detection models considerate of both frontal and angled faces were developed. This study aimed to test the performance of the said models in classifying multi-face images and upon running on a Raspberry Pi device. The accuracies and inference speeds were measured and compared when inferencing images with one, two, and three faces and on the desktop and the Raspberry Pi. With an increasing number of faces in an image, the models’ accuracies were observed to decline, while their speeds were not significantly affected. Moreover, the YOLOv5 Small model was regarded to be potentially the best model for use on lower resource platforms, as it experienced a 3.33% increase in accuracy and recorded the least inference time of two seconds per image among the models. |
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text |
author |
Tarun, Ivan George L. Lopez, Vidal Wyatt M. Serrano, Pamela Anne C. Abu, Patricia Angela R Reyes, Rosula Estuar, Ma. Regina Justina |
author_facet |
Tarun, Ivan George L. Lopez, Vidal Wyatt M. Serrano, Pamela Anne C. Abu, Patricia Angela R Reyes, Rosula Estuar, Ma. Regina Justina |
author_sort |
Tarun, Ivan George L. |
title |
Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi |
title_short |
Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi |
title_full |
Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi |
title_fullStr |
Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi |
title_full_unstemmed |
Performance Evaluation of Face Mask Detection for Real-Time Implementation on an RPi |
title_sort |
performance evaluation of face mask detection for real-time implementation on an rpi |
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Archīum Ateneo |
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2023 |
url |
https://archium.ateneo.edu/discs-faculty-pubs/403 https://archium.ateneo.edu/context/discs-faculty-pubs/article/1403/viewcontent/Paper_105_Performance_Evaluation_of_Face_Mask_Detection.pdf |
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