2018
DOI: 10.1016/j.cviu.2018.01.004
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Local directional ternary pattern: A New texture descriptor for texture classification

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Cited by 74 publications
(21 citation statements)
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“…The LBP, which is developed by Ojala et al, is an effective gray-level texture operator that calculates the spatial characteristics of gray-level images [13], [14]. Many LBP based methods have been proposed to improve the performance of this method [29]. Thus, LBP methods with low computational complexity and high discrimination power have been developed.…”
Section: Previous Workmentioning
confidence: 99%
“…The LBP, which is developed by Ojala et al, is an effective gray-level texture operator that calculates the spatial characteristics of gray-level images [13], [14]. Many LBP based methods have been proposed to improve the performance of this method [29]. Thus, LBP methods with low computational complexity and high discrimination power have been developed.…”
Section: Previous Workmentioning
confidence: 99%
“…This success is mainly owing to two merits of the method: the first one is efficiency, which makes it very popular for the community of image analysis. The second one is flexibility as it can be adapted easily to tackle the requirements of various kinds of applications, even for non-traditional texture [54], LETRIST [48], local concave-and-convex micro structure patterns (LCCMSP) [55], MNTCDP [46], local optimaloriented pattern (LOOP) [56], local directional decoded ternary pattern [57], attractive-and-repulsive centre-symmetric LBP (ARCS-LBP) [58] etc. These LBP variants are mostly based on the improvement of one or more of the following original LBP elements:…”
Section: List Of Evaluated Texture Descriptorsmentioning
confidence: 99%
“…Note that LETRIST, BSIF, and LDN descriptors are in the top five descriptors on four tested datasets and MNTCDP and SLGS descriptors are in the top five descriptors on three tested datasets. AHP, which is the top-performing descriptor on the [55,57], which is performed on all the pairwise combinations of the 50 local texture descriptors on the five tested databases. Our goal here is to give an overall ranking of the different tested descriptors over the used palmprint datasets.…”
Section: 21mentioning
confidence: 99%
“…CSQP computes an eight-bit pattern from 16 pixels in the local neighborhood. Issam et al [57] proposed local directional ternary pattern (LDTP) for texture classification. LDTP, which exploits both LDP's and LTP's concepts, encodes both contrast information and directional pattern features in a compact way based on local derivative variations.…”
Section: Introductionmentioning
confidence: 99%