Noisy Face Image Sets Refining Collaborated with Discriminant Feature Space LearningDownload PDFOpen Website

2017 (modified: 25 Apr 2023)FG 2017Readers: Everyone
Abstract: Large-scale face data together with deep learningtechnology have significantly improved the performance of facerecognition in the wild. Hereinto, the large-scale face data playsa fundamental role, and it is nontrivial to collect a large-scaleface dataset with accurate class labels. No wonder it is quitemoney and effort consuming by collecting manually, howeverit is easy to access large scale face images by using a searchengine with names as keywords. Unfortunately, the retrievedface images from search engine are usually messed up withsome noise images with wrong labels, which forms a greatneed of developing algorithms to refine the retrieved noisyface image set. In this work, we propose a joint frameworkin which multiple noisy face image sets refining collaborateswith the discriminant feature space learning. Specifically, thetwo modules, refining each noisy face image set by conductingone-class classification based on learnt discriminant feature andlearning discriminant feature space based on refined face imagesets, are updated iteratively inducing an effective refinementmodel. To investigate the proposed method, we collect a realworlddataset for the evaluation including 15,515 images of46 subjects with 40% ~ 63.5% noise images per subject. Theexperimental results demonstrate that state-of-the-art one-classclassification methods can be significantly improved whenbeing embedded in the proposed framework, and the proposedframework exhibits strong robustness even when the mean noiseproportion is up to 50% ~ 80%.
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