Face Recognition Across the Imaging Spectrum 2016
DOI: 10.1007/978-3-319-28501-6_11
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Face Recognition in Challenging Environments: An Experimental and Reproducible Research Survey

Abstract: One important type of biometric authentication is face recognition, a research area of high popularity with a wide spectrum of approaches that have been proposed in the last few decades. The majority of existing approaches are conceived for or evaluated on constrained still images. However, more recently research interests have shifted towards unconstrained "in-the-wild" still images and videos. To some extent, current state-of-the-art systems are able to cope with variability due to pose, illumination, expres… Show more

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Cited by 22 publications
(26 citation statements)
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“…The table also summarizes the hyper-parameters and the scoring method used in each FR system. For the ISV modeling method, we have used the hyper-parameter values recommended by Günther et al [42].…”
Section: Methodsmentioning
confidence: 99%
“…The table also summarizes the hyper-parameters and the scoring method used in each FR system. For the ISV modeling method, we have used the hyper-parameter values recommended by Günther et al [42].…”
Section: Methodsmentioning
confidence: 99%
“…Thus, we obtain a baseline measurement by computing the cosine similarity between the deep feature vectors of gallery template G g of subject g and probe P . Since each gallery template is composed of three deep feature vectors: G g = (G g 0 , G g 1 , G g 2 ), we apply two strategies: First, we compute three similarities and take the maximum value, which has been shown to provide the best performance in handling several scores [12]:…”
Section: Cosine Similaritymentioning
confidence: 99%
“…Face recognition algorithms have been widely researched over the past decades, resulting in tremendous performance improvements, particularly over the past few years. Even traditional face recognition algorithms, i.e., before the widespread use of deep networks, performed quite well on frontal images under good illumination [12], making them commercially viable for certain applications. For instance, verification scenarios such as automated bor- der control stations [7] allow reasonable control of imaging conditions and subjects usually cooperate with the systemthose that do not are easily spotted by airport security personnel.…”
Section: Introductionmentioning
confidence: 99%
“…In this way future researchers will be able to reproduce exactly the same tests with the same identities in each fold (which is not possible today). This database has a well defined protocol and it is pub- licly available for download 6 . We also organized this protocol in the same way as for CUFS database and it is also freely available for download 7 .…”
Section: Cuhk Face Sketch Database (Cufs)mentioning
confidence: 99%
“…For simplicity of this analysis the face size and inter-pupil distance were set with constant values. As a reference for those values we used in our experiments the parameters extensively tuned in [6]. This work presents an extensive analysis of face recognition algorithms under different face databases and defined a face size of 80 × 64 pixels and an inter-pupil distance of 33 pixels, after a geometric normalization, as a good trade-off between face size and recognition rate.…”
Section: Image Preprocessing and Feature Extractionmentioning
confidence: 99%