基于混沌PSO-BFO和基于外观的混合识别算法的人脸特征选择与识别

Santosh Kumar, S. Singh
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引用次数: 6

摘要

基于群智能的方法是一种新的优化算法,它模拟分散和自组织系统的群体集体行为,在特征选择方面得到了广泛的应用和使用,以解决复杂问题,并根据选择的最优特征集对对象进行分类。特征选择是根据一定的准则从提取的特征集中选择一个子集进行优化的过程。在基于计算机视觉的人脸识别系统中,特征选择和表示算法对于从人脸数据库中选择最优和区分的人脸特征向量集起着重要作用。提出了一种基于混合粒子群优化算法和细菌觅食优化算法的人脸特征选择新方法。混合算法包括两个部分:1在混合算法的不同阶段引入两种类型的混沌映射,既保持了种群的巨大多样性,又提高了全局搜索和探索能力;在该混合方法中,基于外观的整体人脸表示和识别方法,如主成分分析PCA、局部判别分析LDA、独立成分分析ICA和离散余弦变换DCT,从耶鲁人脸数据库中提取特征向量。然后采用混合混沌粒子群算法和BFO算法进行特征选择,选择最优特征集;它快速搜索最有利于个体分类和识别的人脸特征子空间。实验结果表明,本文提出的混合方法与现有方法的性能进行了比较,表明混合方法可以有效地用于人脸分类和识别的特征选择。
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Feature Selection and Recognition of Face by using Hybrid Chaotic PSO-BFO and Appearance-Based Recognition Algorithms
Swarm intelligence based approaches are a recent optimization algorithm that simulates the groups collective behavior of decentralized and self-organized systems and have gained more proliferation due to a variety of applications and uses in the feature selection to solve the complex problems and classify the objects based on chosen optimal set of features. Feature selection is a process that selects a subset from the extracted features sets according to some criterions for optimization. In computer vision based face recognition systems, feature selection, and representation algorithms play an important role for the selection of optimal, and discriminatory sets of facial feature vectors from the face database. This paper presents a novel approach for facial feature selection by using Hybrid Particle Swarm Optimization PSO, and Bacterial Foraging Optimization BFO optimization algorithms. The hybrid approach consists of two parts: 1 two types of chaotic mappings are introduced in different phase of proposed hybrid algorithms which preserve the huge diversity of population and improve the global searching and exploration capability; 2 In proposed hybrid approach, appearance based holistic face representation and recognition approaches such as Principal Component Analysis PCA, Local Discriminant Analysis LDA, Independent Component Analysis ICA and Discrete Cosine Transform DCT extract feature vectors from the Yale face database. Then features are selected by applying hybrid Chaotic PSO and BFO algorithms for the selection of optimal set of features; it quickly searches the feature subspace of facial features that is the most beneficial for classification and recognition of individuals. From the experimental results, the authors have compared the performance of proposed hybrid approach with existing approaches and conclude that hybrid approach can be efficiently used for feature selection for classification and recognition of face of individuals.
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