Multi-Resolution Intrinsic Texture Geometry-Based Local Binary Pattern for Texture Classification
Abstract
In this paper, we propose a new hybrid Local Binary Pattern (LBP) based
on Hessian matrix and Attractive Center-Symmetric LBP (ACS-LBP), called
Hess-ACS-LBP.d The Hessian matrix provides the directional derivative
information of different texture regions, while ACS-LBP reveals the
local texture features efficiently.d To obtain the macro- and
micro-structure textural changes, Hessian matrix is calculated in a
multiscale schema.d Multiscale Hessian matrix presents the intrinsic
local geometry of the texture changes.d The magnitude information of the
Hessian matrix is used in the ACS-LBP method.d A cross-scale joint
coding strategy is used to construct Hess-ACS-LBP descriptor.d Finally,
histogram concatenation is carried out.d Extensive experiments on eight
texture databases of CUReT, USPTex, KTH-TIPS2b, MondialMarmi, OuTeX
TC\_00013, XU HR, ALOT and STex validate the efficiency of the proposed
method.d The proposed Hess-ACS-LBP method achieves about 20\%
improvement over the original LBP method and 1\%-11\% improvement over
the other state-of-the-art hand-crafted LBP methods in terms of
classification accuracy.d Besides, the experimental results show that
the proposed method achieves up to 32\% better results than the
state-of-the-art deep learning based methods.d Especially, the
performance of the proposed method on ALOT and STex datasets containing
many classes is remarkable.
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