2022
DOI: 10.1007/s11042-022-13006-8
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Robust local binary pattern for face recognition in different challenges

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Cited by 20 publications
(4 citation statements)
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“…In this regard, LPB does not capture the details of microstructures and it is sensitive to image noise. (Karanwal, 2022) Extracting and classifying local image features is a fundamental challenge in many applications (Liu, Yang, & Huang, 2011) and different approaches have been used to describe local image patterns. Some of the descriptors are Shape Context (Salve & Jondhale, 2010), spin image (Lazebnik, Schmid, & Ponce, 2003), complex filters (Schaffalitzky & Zisserman, 2002), steerable filters (Freeman & Adelson, 1991), moment invariants (Van Gool, Moons, & Ungureanu, 1996), SIFT (Lowe, 2004), and the differential invariants (Koenderink & Van Doorn, 1987).…”
Section: Robust Lbb (Rlbp)mentioning
confidence: 99%
“…In this regard, LPB does not capture the details of microstructures and it is sensitive to image noise. (Karanwal, 2022) Extracting and classifying local image features is a fundamental challenge in many applications (Liu, Yang, & Huang, 2011) and different approaches have been used to describe local image patterns. Some of the descriptors are Shape Context (Salve & Jondhale, 2010), spin image (Lazebnik, Schmid, & Ponce, 2003), complex filters (Schaffalitzky & Zisserman, 2002), steerable filters (Freeman & Adelson, 1991), moment invariants (Van Gool, Moons, & Ungureanu, 1996), SIFT (Lowe, 2004), and the differential invariants (Koenderink & Van Doorn, 1987).…”
Section: Robust Lbb (Rlbp)mentioning
confidence: 99%
“…LaplacianFaces [33] consists in mapping the face into a face subspace based on Locality Preserving Projections (LPP) [32] to get the best global face description. The most popular used techniques are based on different descriptors, such as Local Binary Pattern (LBP) and its derivatives [47], Histogram of Oriented Gradients (HOG) [55], Vander Lugt Correlator (VLC) , Scale Invariant Feature Transform (SIFT). All these descriptors are presented in [78].…”
Section: Face Recognition Studiesmentioning
confidence: 99%
“…Texture-based methods, such as double Gabor orientation Weber local descriptor (DG-WLD) [5], multi-scale Gabor orientation Weber local descriptors (MOGWLD) [6], difference 2 of 17 of block means (DBM) [7], democratic voting down-sampling (DVD) [8], and various local binary pattern [9] (LBP) variants mentioned in [10], extract information about the direction, frequency, and phase of palm vein texture as features for matching and recognition. However, these methods are limited by the inadequate richness and clarity of texture information in palm vein images, which can result in decreased recognition performance.…”
Section: Introductionmentioning
confidence: 99%