Abstract

Image description is a great challenge in the field of computer vision under complex illumination condition. The complex illumination condition is usually unavoidable and unpredictable in real application. In this paper, we propose a novel generalized image descriptor, named as Anisotropy Weber Adapted Symmetric Ternary Pattern (AWASTP), which can overcome the directional inseparability of Weber Local Descriptor (WLD) and invariant threshold of Local Ternary Pattern (LTP). More particularly, we heighten the discriminative effectiveness of image description under complex illumination condition in several ways to restrain the effect of illumination variation. Firstly, a novel selection scheme for scale and angle is proposed. Based on this, an improved anisotropic Laplacian of Gaussian(ALOG) operator model is established by introducing the scale and angle parameter, moreover, an Anisotropic Weber Local Descriptor (AWLD) is presented, which can achieve more rich detailed information of illumination-insensitive feature. Secondly, an Adaptive Symmetric Ternary Pattern (ASTP) algorithm is proposed based on Weber criterion to generate more accurate threshold judgment according to the region characteristics. Thirdly, a two-dimensional AWASTP histogram is created to enhance the discriminative power and represent illumination-insensitive feature description. We conduct many experiments on benchmark databases, such as CMUPIE, FERET, PhoTex, RawFoot, and etc. Experimental results demonstrate the effectiveness of the proposed approach under different illumination conditions.

Highlights

  • In recent years, with the development of artificial intelligence technology, image recognition has become a hot topic in computer vision, which is widely applied in the fields of biometric recognition, object detection, image retrieval, license plate recognition, and etc

  • anisotropic LOG (ALOG) operator can improve the discrimination and robustness on variation of illumination; (ii) Aiming at gradient direction of Weber Local Descriptor (WLD), we propose an adaptive symmetric ternary pattern(ASTP) to extend the direction from four to eight and extract more detail direction information based on adaptive threshold selection strategy; (iii) Unlike the original WLD, a novel generalized image descriptor, named as Anisotropy Weber Adapted Symmetric Ternary Pattern (AWASTP) is proposed, including two components: differential excitation based on ALOG and gradient direction based on Adaptive Symmetric Ternary Pattern (ASTP)

  • We compare the performance of AWASTP with other classic local feature extraction algorithms, such as Local Binary Pattern (LBP), Local Ternary Pattern (LTP), Local Graphic Structure (LGS), SLGS, and WLD on four databases

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Summary

Introduction

With the development of artificial intelligence technology, image recognition has become a hot topic in computer vision, which is widely applied in the fields of biometric recognition, object detection, image retrieval, license plate recognition, and etc. ALOG operator can improve the discrimination and robustness on variation of illumination; (ii) Aiming at gradient direction of WLD, we propose an adaptive symmetric ternary pattern(ASTP) to extend the direction from four to eight and extract more detail direction information based on adaptive threshold selection strategy; (iii) Unlike the original WLD, a novel generalized image descriptor, named as Anisotropy Weber Adapted Symmetric Ternary Pattern (AWASTP) is proposed, including two components: differential excitation based on ALOG and gradient direction based on ASTP.

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