基于边缘方向矩阵的局部二值模式描述符的不变模式识别

M. A. Talab, S. Abdullah, M. Razalan
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引用次数: 5

摘要

用于形状和纹理图像识别的不变描述符是模式识别的一个重要分支。它由旨在通过人类的知识和工作从形状图像中提取信息的技术组成。描述符需要具有强的局部二值模式(LBP)来编码区分它们的信息。局部二进制模式(Local Binary Pattern, LBP)通过引入一个反映对象结构均匀性的查找表来保证编码全局和局部信息以及尺度不变性。由于边缘方向矩阵(EDMS)只适用于采用一阶和二阶关系的全局不变描述子,因此需要使用这种方法。本文的主要目的是提高LBP和EDMS相结合的识别能力。一起工作,这两个描述符将增加程序的优势,并使研究人员能够调查每一个的弱点。使用了两种分类器:多层神经网络和随机森林。本文使用两个基准数据集:MPEG-7 CE-Shape-1用于形状,阿拉伯书法用于纹理,将所使用的技术与灰度共现矩阵(GLCM-EDMS)和尺度不变特征变换(SIFT)进行了比较。实验结果表明,该描述符优于GLCM-EDMS和SIFT。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge direction matrixes-based local binary patterns descriptor for invariant pattern recognition
Invariant descriptor for shape and texture image recognition usage is an essential branch of pattern recognition. It is made up of techniques that aim at extracting information from shape images via human knowledge and works. The descriptors need to have strong Local Binary Pattern (LBP) in order to encode the information distinguishing them. Local Binary Pattern (LBP) ensures encoding global and local information and scaling invariance by introducing a look-up table to reflect the uniformity structure of an object. It is needed as the edge direction matrices (EDMS) only apply global invariant descriptor which employs first and secondary order relationships. The main objective of this paper is the need of improved recognition capabilities which achieved by the combining LBP and EDMS. Working together, these two descriptors will add advantages to the program and enable the researcher to investigate the weaknesses of each one. Two classifiers are used: multi-layer neural network and random forest. The techniques used in this paper are compared with Gray-Level Co-occurrence matrices (GLCM-EDMS) and Scale Invariant Feature Transform (SIFT) by using two benchmark dataset: MPEG-7 CE-Shape-1 for shape and Arabic calligraphy for texture. The experiments have shown the superiority of the introduced descriptor over the GLCM-EDMS and the SIFT.
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