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Moment-based local binary patterns: A novel descriptor for invariant pattern recognition applications

机译:基于矩的局部二进制模式:用于不变模式识别应用的新型描述符

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摘要

A novel descriptor able to improve the classification capabilities of a typical pattern recognition system is proposed in this paper. The introduced descriptor is derived by incorporating two efficient region descriptors, namely image moments and local binary patterns (LBP), commonly used in pattern recognition applications, in the last decades. The main idea behind this novel feature extraction methodology is the need of improved recognition capabilities, a goal achieved by the combinative use of these descriptors. This collaboration aims to make use of the major advantages each one presents, by simultaneously complementing each other, in order to elevate their weak points. In this way, the useful properties of the moments and moment invariants regarding their robustness to the noise presence, their global information coding mechanism and their invariant behaviour under scaling, translation and rotation conditions, along with the local nature of the LBP, are combined in a single concrete methodology. As a result a novel descriptor invariant to common geometric transformations of the described object, capable to encode its local characteristics, is formed and its classification capabilities are investigated through massive experimental scenarios. The experiments have shown the superiority of the introduced descriptor over the moment invariants, the LBP operator and other well-known from the literature descriptors such as HOG, HOG-LBP and LBP-HF.
机译:本文提出了一种能够提高典型模式识别系统分类能力的新型描述符。引入的描述符是通过合并两个有效的区域描述符(即图像矩和局部二进制模式(LBP))而获得的,在过去的几十年中,它们通常在模式识别应用中使用。这种新颖的特征提取方法背后的主要思想是需要提高识别能力,这是通过组合使用这些描述符来实现的目标。这项合作旨在通过相互补充,从而充分利用每个人的主要优势,以提高各自的弱点。这样,将矩和矩不变式的有用特性与它们在噪声存在下的鲁棒性,它们的全局信息编码机制以及它们在缩放,平移和旋转条件下的不变行为以及LBP的局部性质结合在一起,单一的具体方法。结果,形成了能够描述其对象的局部特征的,不变于所描述对象的常见几何变换的新颖描述符,并且通过大量的实验场景研究了其分类能力。实验表明,引入的描述符比不变矩,LBP算子和其他从文献描述符中已知的描述符(如HOG,HOG-LBP和LBP-HF)优越。

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