Feature selection using dynamic binary particle swarm optimization for Arabian horse identification system

Samar I. Zekrallah, Mona M. Soliman, A. Hassanien
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引用次数: 1

Abstract

Being able to formally identify horses is crucial for many reasons like biosecurity and regulatory risks, fairness in competition to ensure the proper horse and owner are competing in an event, retrieval after theft and medical record management. Among different horses types Arabian horse is one of the top ten popular horse breeds all over the world. It is the most expensive horse in the market. Such horse identification system can be based on biometric parameters. This work aims to introduce a novel method of periocular region segmentation using Otsu based method in combination with Improved Fruit Fly Optimization Algorithm (IFOA) followed by a feature extraction and selection phase for Arabian horse identification system. The segmented horse periocular region is subjected to texture analysis using Gabor filter and discrete cosine transform for proper feature extraction. A proper Feature Selection step is performed with the aim of selecting optimum features. Such optimal set of features will be used later in Arabian horse identification and recognition system. Such optimal feature selection is achieved using Dynamic Binary Particle Swarm Optimization.
基于动态二元粒子群优化的阿拉伯马识别系统特征选择
能够正式识别马匹是至关重要的,原因有很多,比如生物安全和监管风险、公平竞争以确保合适的马匹和主人参加比赛、盗窃后的检索和医疗记录管理。在不同的马类型中,阿拉伯马是世界上最受欢迎的十大马品种之一。这是市场上最贵的马。这样的马识别系统可以基于生物特征参数。本研究将基于Otsu的方法与改进的果蝇优化算法(IFOA)相结合,引入一种新的眼周区域分割方法,然后进行特征提取和选择阶段,用于阿拉伯马识别系统。利用Gabor滤波和离散余弦变换对分割后的马眼周区域进行纹理分析,提取合适的特征。进行适当的特征选择步骤,以选择最优特征。这种最优特征集将在以后的阿拉伯马识别系统中得到应用。采用动态二元粒子群算法实现了特征的最优选择。
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