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중환자실 도어 제어를 위한 MobileNetV2 기반의 실시간 마스크 감지 인공지능 알고리즘Face Mask Recognition AI-algorithm with MobileNetV2-BASED Neural Network for Automatic Door Control in Intensive Care Unit (ICU)

Other Titles
Face Mask Recognition AI-algorithm with MobileNetV2-BASED Neural Network for Automatic Door Control in Intensive Care Unit (ICU)
Authors
박찬민김우종박민섭박태용곽윤상
Issue Date
Apr-2024
Publisher
한국정밀공학회
Keywords
딥러닝; 합성곱 신경망; 마스크 인식; Deep learning; Convolutional neural network; Face mask recognition
Citation
한국정밀공학회지, v.41, no.4, pp 295 - 303
Pages
9
Journal Title
한국정밀공학회지
Volume
41
Number
4
Start Page
295
End Page
303
URI
https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/28637
DOI
10.7736/JKSPE.023.149
ISSN
1225-9071
2287-8769
Abstract
In this study, we proposed an AI-algorithm for face mask recognition based on the MobileNetV2 network to implement automatic door control in intensive care units. The proposed network was constructed using four bottleneck blocks, incorporating depth-wise separable convolution with channel expansion/projection to minimize computational costs. The performance of the proposed network was compared with other networks trained with an identical dataset. Our network demonstrated higher accuracy than other networks. It also had less trainable total parameters. Additionally, we employed the CVzone-based machine learning model to automatically detect face location. The neural network for mask recognition and the face detection model were integrated into a system for real-time door control using Arduino. Consequently, the proposed algorithm could automatically verify the wearing of masks upon entry to intensive care units, thereby preventing respiratory disease infections among patients and medical staff. The low computational cost and high accuracy of the proposed algorithm also provide excellent performance for real-time mask recognition in actual environments.
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