To combat the spread of the COVID-19 pandemic, it is essential to strictly obey social distancing measures, as well as have the possibility to possess and wear personal protective equipment. This paper proposes a mask and face recognition algorithm based on YOLOv3 for individual protection applications. The proposed method processes images directly in raw data format input to a neural network trained with deep learning techniques. System training was performed on a set of images appropriately obtained from the MAFA dataset by selecting those with surgical masks for a total of about 6,000 cases. The performances obtained indicate 84% accuracy in recognizing a mask and 96% in the case of a face.
YOLOv3-based mask and face recognition algorithm for individual protection applications / Avanzato, R.; Beritelli, F.; Russo, M.; Russo, S.; Vaccaro, M.. - 2768:(2020), pp. 41-45. (Intervento presentato al convegno 2020 International Conference for Young Researchers in Informatics, Mathematics, and Engineering, ICYRIME 2020 tenutosi a Online).
YOLOv3-based mask and face recognition algorithm for individual protection applications
Russo S.
Co-primo
Conceptualization
;
2020
Abstract
To combat the spread of the COVID-19 pandemic, it is essential to strictly obey social distancing measures, as well as have the possibility to possess and wear personal protective equipment. This paper proposes a mask and face recognition algorithm based on YOLOv3 for individual protection applications. The proposed method processes images directly in raw data format input to a neural network trained with deep learning techniques. System training was performed on a set of images appropriately obtained from the MAFA dataset by selecting those with surgical masks for a total of about 6,000 cases. The performances obtained indicate 84% accuracy in recognizing a mask and 96% in the case of a face.File | Dimensione | Formato | |
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