CVLGIVMay 5, 2021

Real-time Face Mask Detection in Video Data

arXiv:2105.01816v11 citations
Originality Synthesis-oriented
AI Analysis

This addresses public health monitoring during the COVID-19 pandemic, but it is incremental as it applies existing deep learning methods to a new application.

The paper tackled real-time detection of correct and incorrect face mask-wearing in video streams, achieving 99.97% accuracy with a synthetic dataset at 6 FPS and 89% mAP with real-world images at 52 FPS.

In response to the ongoing COVID-19 pandemic, we present a robust deep learning pipeline that is capable of identifying correct and incorrect mask-wearing from real-time video streams. To accomplish this goal, we devised two separate approaches and evaluated their performance and run-time efficiency. The first approach leverages a pre-trained face detector in combination with a mask-wearing image classifier trained on a large-scale synthetic dataset. The second approach utilizes a state-of-the-art object detection network to perform localization and classification of faces in one shot, fine-tuned on a small set of labeled real-world images. The first pipeline achieved a test accuracy of 99.97% on the synthetic dataset and maintained 6 FPS running on video data. The second pipeline achieved a mAP(0.5) of 89% on real-world images while sustaining 52 FPS on video data. We have concluded that if a larger dataset with bounding-box labels can be curated, this task is best suited using object detection architectures such as YOLO and SSD due to their superior inference speed and satisfactory performance on key evaluation metrics.

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