Improved MB-LBP Feature Extraction Algorithm Based on Reduced-dimensional HOG

Lijun Yu, Qing Li, Hui Wang, Ce Shi
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引用次数: 2

Abstract

Biometrics identification technology has gradually become a research hotspot in the field of information processing. As a step of biometrics identification technology, feature extraction processing plays a vital role. Aiming at the shortcoming of existing feature extraction algorithms are vulnerable to noise interference, large amount of calculation, high dimension and incomplete features, this paper proposes an improved MB-LBP feature extraction algorithm based on reduced-dimensional HOG. The algorithm uses MB-LBP to extract texture features of the image, and uses reduced-dimensional HOG to extract edge features. Through serial fusion, complete image features are formed. The proposed algorithm is verified by experimental simulation comparison with HOG feature extraction, dimensionality reduction HOG feature extraction and MB-LBP feature extraction. The algorithm in this paper has the characteristics of strong anti-interference ability, low dimension and complete features in feature extraction.
基于降维HOG的改进MB-LBP特征提取算法
生物特征识别技术已逐渐成为信息处理领域的研究热点。作为生物特征识别技术的一个步骤,特征提取处理起着至关重要的作用。针对现有特征提取算法易受噪声干扰、计算量大、特征维数高、特征不完整等缺点,提出了一种基于降维HOG的改进MB-LBP特征提取算法。该算法使用MB-LBP提取图像的纹理特征,使用降维HOG提取图像的边缘特征。通过序列融合,形成完整的图像特征。通过与HOG特征提取、降维HOG特征提取和MB-LBP特征提取的实验仿真比较,验证了该算法的有效性。本文算法在特征提取方面具有抗干扰能力强、低维数、特征完备等特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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