4.6 Article

A Deep Learning Based Light-Weight Face Mask Detector With Residual Context Attention and Gaussian Heatmap to Fight Against COVID-19

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 96964-96974

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3095191

Keywords

Face recognition; Feature extraction; Faces; Detectors; COVID-19; Convolution; Heating systems; Face mask detection; residual context attention; synthesized Gaussian heat map regression; coronavirus disease 2019

Funding

  1. Innovation and Technology Commission of Hong Kong
  2. City University of Hong Kong [7005230]

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This paper proposes a new deep learning-based face mask detector to meet the low computational requirements for embedded systems. By introducing a novel residual context attention module and an auxiliary task, the feature extraction ability of the model is enhanced, achieving state-of-the-art results on two public datasets.
Coronavirus disease 2019 has seriously affected the world. One major protective measure for individuals is to wear masks in public areas. Several regions applied a compulsory mask-wearing rule in public areas to prevent transmission of the virus. Few research studies have examined automatic face mask detection based on image analysis. In this paper, we propose a deep learning based single-shot light-weight face mask detector to meet the low computational requirements for embedded systems, as well as achieve high performance. To cope with the low feature extraction capability caused by the light-weight model, we propose two novel methods to enhance the model's feature extraction process. First, to extract rich context information and focus on crucial face mask related regions, we propose a novel residual context attention module. Second, to learn more discriminating features for faces with and without masks, we introduce a novel auxiliary task using synthesized Gaussian heat map regression. Ablation studies show that these methods can considerably boost the feature extraction ability and thus increase the final detection performance. Comparison with other models shows that the proposed model achieves state-of-the-art results on two public datasets, the AIZOO and Moxa3K face mask datasets. In particular, compared with another light-weight you only look once version 3 tiny model, the mean average precision of our model is 1.7% higher on the AIZOO dataset, and 10.47% higher on the Moxa3K dataset. Therefore, the proposed model has a high potential to contribute to public health care and fight against the coronavirus disease 2019 pandemic.

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