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Improving the Capability of Real-Time Face Masked Recognition using Cosine Distance

Devira Anggi Maharani, Carmadi Machbub, Pranoto Hidaya Rusmin, Lenni Yulianti

202039 citationsDOIOpen Access PDF

Abstract

During the pandemic, people around the world are expected to wear masks. So far, the ability to recognize the identity of a person who wears a mask is still a challenge. Face recognition is widely used in schools, hospitals, and companies as an attendance system, even as a criminal watchlist examination system. Thus, face recognition implementation is difficult to obtain the identity of people who are wearing masks, and moreover, computer systems might fail to detect the faces. This study used Haar-cascade Face detection and MobileNet while proposing the addition of the cosine distance method. This method compares the middle position of face detection results within the previous frame and the current. The proposed system can generate a person's name and identification number while wearing a mask. The system is designed to utilize multi-threading by comparing the transfer learning methods of VGG16 and Triplet Loss FaceNet for face mask recognition with an accuracy rate of 100% and 82.20%. Real-time implementation speed resulted in 4 FPS and 22 FPS and successfully added cosine distance to generate a person's ID number.

Topics & Concepts

Computer scienceFacial recognition systemArtificial intelligenceComputer visionFace (sociological concept)Three-dimensional face recognitionCosine similarityFace detectionFrame (networking)Pattern recognition (psychology)TelecommunicationsSocial scienceSociologyFace recognition and analysisFace and Expression RecognitionBiometric Identification and Security
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