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Face mask detection using MobileNet and Global Pooling Block

Isunuri B Venkateswarlu, Jagadeesh Kakarla, Shree Prakash

2020102 citationsDOI

Abstract

Coronavirus disease is the latest epidemic that forced an international health emergency. It spreads mainly from person to person through airborne transmission. Community transmission has raised the number of cases over the world. Many countries have imposed compulsory face mask policies in public areas as a preventive action. Manual observation of the face mask in crowded places is a tedious task. Thus, researchers have motivated for the automation of face mask detection system. In this paper, we have presented a MobileNet with a global pooling block for face mask detection. The proposed model employs a global pooling layer to perform a flatten of the feature vector. A fully connected dense layer associated with the softmax layer has been utilized for classification. Our proposed model outperforms existing models on two publicly available face mask datasets in terms of vital performance metrics.

Topics & Concepts

PoolingSoftmax functionComputer scienceFace (sociological concept)Block (permutation group theory)Layer (electronics)Face detectionArtificial intelligenceTransmission (telecommunications)Feature (linguistics)Facial recognition systemTask (project management)Machine learningFeature extractionData miningTelecommunicationsDeep learningEngineeringSystems engineeringLinguisticsGeometryChemistrySociologySocial sciencePhilosophyOrganic chemistryMathematicsFace recognition and analysisCOVID-19 diagnosis using AIVideo Surveillance and Tracking Methods
Face mask detection using MobileNet and Global Pooling Block | Litcius