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Face Mask Detection in Smart Cities Using Deep and Transfer Learning: Lessons Learned from the COVID-19 Pandemic

Journal

SYSTEMS
Volume 11, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/systems11020107

Keywords

face mask detection; deep learning; deep transfer learning; deep domain adaptation; YOLO; MobileNet

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This paper reviews the progress in face mask detection research, with a focus on deep learning and deep transfer learning techniques. It first describes and discusses existing face mask detection datasets, then presents recent advances in object detectors and Convolutional Neural Network architectures, as well as the different deep learning techniques that have been applied. Benchmarking results are summarized, and the limitations of datasets and methodologies are discussed. Lastly, future research directions are discussed in detail.
After different consecutive waves, the pandemic phase of Coronavirus disease 2019 does not look to be ending soon for most countries across the world. To slow the spread of the COVID-19 virus, several measures have been adopted since the start of the outbreak, including wearing face masks and maintaining social distancing. Ensuring safety in public areas of smart cities requires modern technologies, such as deep learning and deep transfer learning, and computer vision for automatic face mask detection and accurate control of whether people wear masks correctly. This paper reviews the progress in face mask detection research, emphasizing deep learning and deep transfer learning techniques. Existing face mask detection datasets are first described and discussed before presenting recent advances to all the related processing stages using a well-defined taxonomy, the nature of object detectors and Convolutional Neural Network architectures employed and their complexity, and the different deep learning techniques that have been applied so far. Moving on, benchmarking results are summarized, and discussions regarding the limitations of datasets and methodologies are provided. Last but not least, future research directions are discussed in detail.

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