A Review on Face Mask Recognition.

Publication date: Jan 10, 2025

This review offers a comprehensive and in-depth analysis of face mask detection and recognition technologies, emphasizing their critical role in both public health and technological advancements. Existing detection methods are systematically categorized into three primary classes: feaRture-extraction-and-classification-based approaches, object-detection-models-based methods and multi-sensor-fusion-based methods. Through a detailed comparison, their respective workflows, strengths, limitations, and applicability across different contexts are examined. The review underscores the paramount importance of accurate face mask detection, especially in response to global public health challenges such as pandemics. A central focus is placed on the role of datasets in driving algorithmic performance, addressing key factors, including dataset diversity, scale, annotation granularity, and modality. The integration of depth and infrared data is explored as a promising avenue for improving robustness in real-world conditions, highlighting the advantages of multimodal datasets in enhancing detection capabilities. Furthermore, the review discusses the synergistic use of real-world and synthetic datasets in overcoming challenges such as dataset bias, scalability, and resource scarcity. Emerging solutions, such as lightweight model optimization, domain adaptation, and privacy-preserving techniques, are also examined as means to improve both algorithmic efficiency and dataset quality. By synthesizing the current state of the field, identifying prevailing challenges, and outlining potential future research directions, this paper aims to contribute to the development of more effective, scalable, and robust face mask detection systems for diverse real-world applications.

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Concepts Keywords
Algorithmic Algorithms
Fearture Automated Facial Recognition
Future COVID-19
Global COVID-19
Privacy Face
face mask detection
Humans
Masks
object detection

Semantics

Type Source Name
disease IDO role
disease IDO object
disease MESH privacy
disease IDO quality
disease IDO production
disease MESH COVID 19
disease MESH cross infection
disease MESH occupational diseases
disease MESH infectious diseases
drug DRUGBANK Coenzyme M
drug DRUGBANK Nonoxynol-9
drug DRUGBANK Isoxaflutole
disease IDO process
disease IDO algorithm
drug DRUGBANK Trestolone
drug DRUGBANK Flunarizine
pathway REACTOME Translation
drug DRUGBANK Calusterone
disease MESH anomalies
drug DRUGBANK Methyldopa
disease MESH postures
drug DRUGBANK Sulpiride
disease MESH aids
drug DRUGBANK Guanosine
drug DRUGBANK Docusate
drug DRUGBANK Etodolac

Original Article

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