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D-LORD: DYSL-AI Database for Low-Resolution Disguised Face Recognition | IEEE Journals & Magazine | IEEE Xplore
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D-LORD: DYSL-AI Database for Low-Resolution Disguised Face Recognition


Abstract:

Face recognition in a low-resolution video stream captured from a surveillance camera is a challenging problem. The problem becomes even more complicated when the subject...Show More

Abstract:

Face recognition in a low-resolution video stream captured from a surveillance camera is a challenging problem. The problem becomes even more complicated when the subjects appearing in the video wear disguise artifacts to hide their identity or try to impersonate someone. The lack of labeled datasets restricts the current research on low-resolution face recognition systems under disguise. With this paper, we propose a large-scale database, D-LORD, that will facilitate the research on face recognition. The proposed D-LORD dataset includes high-resolution mugshot images of 2,100 individuals and 14,098 low-resolution surveillance videos, collectively containing over 1.2 million frames. Each frame in the dataset has been annotated with five facial keypoints and a single bounding box for each face. In the videos, subjects’ faces are occluded by various disguise artifacts, such as face masks, sunglasses, wigs, hats, and monkey caps. To the best of our knowledge, D-LORD is the first database to address the complex problem of low-resolution face recognition with disguise variations. We also establish the benchmark results of several state-of-the-art face detectors, frame selection algorithms, face restoration, and face verification algorithms using well-structured experimental protocols on the D-LORD dataset. The research findings indicate that the Genuine Acceptance Rate (GAR) at 1% False Acceptance Rate (FAR) varies between 86.44% and 49.45% across different disguises and distances. The dataset is publicly available to the research community at https://dyslai.org/datasets/D-LORD/.
Page(s): 147 - 157
Date of Publication: 18 August 2023
Electronic ISSN: 2637-6407

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