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An ablation study on part-based face analysis using a Multi-input Convolutional Neural Network and Semantic Segmentation

Andrea F. Abate, Lucia Cimmino, Javier Lorenzo-Navarro

2023Pattern Recognition Letters16 citationsDOIOpen Access PDF

Abstract

Face-based recognition methods usually need the image of the whole face to perform, but in some situations, only a fraction of the face is visible, for example wearing sunglasses or recently with the COVID pandemic we had to wear facial masks. In this work, we propose a network architecture made up of four deep learning streams that process each one a different face element, namely: mouth, nose, eyes, and eyebrows, followed by a feature merge layer. Therefore, the face is segmented into the part of interest by means of ROI masks to keep the same input size for the four network streams. The aim is to assess the capacity of different combinations of face elements in recognizing the subject. The experiments were carried out on the Masked Face Recognition Database (M2FRED) which includes videos of 46 participants. The obtained results are 96% of recognition accuracy considering the four face elements; and 92%, 87%, and 63% of accuracy for the best combination of three, two, and one face elements respectively.

Topics & Concepts

Computer scienceArtificial intelligenceMerge (version control)Convolutional neural networkFace (sociological concept)Pattern recognition (psychology)Computer visionSegmentationFacial recognition systemFeature extractionSociologySocial scienceInformation retrievalFace recognition and analysisFace and Expression RecognitionBiometric Identification and Security
An ablation study on part-based face analysis using a Multi-input Convolutional Neural Network and Semantic Segmentation | Litcius