Object Recognition Using Enhanced Particle Swarm Optimization

Michael Willis, Li Zhang, Han Liu, Hailun Xie, Kamlesh Mistry
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引用次数: 1

Abstract

The identification of the most discriminative features in an explainable AI decision-making process is a challenging problem. This research tackles such challenges by proposing Particle Swarm Optimization (PSO) variants embedded with novel mutation and sampling iteration operations for feature selection in object recognition. Specifically, five PSO variants integrating different mutation and sampling strategies have been proposed to select the most discriminative feature subsets for the classification of different objects. A mutation strategy is firstly proposed by randomly flipping the particle positions in some dimensions to generate new feature interactions. Moreover, instead of embarking the position updating evolution in PSO, the proposed PSO variants generate offspring solutions through a sampling mechanism during the initial search process. Two offspring generation sampling schemes are investigated, i.e. the employment of the personal and global best solutions obtained using the mutation mechanism, respectively, as the starting positions for the subsequent search process. Subsequently, several machine learning algorithms are used in conjunction with the proposed PSO variants to perform object classification. As evidenced by the empirical results, the proposed PSO variants outperform the original PSO algorithm, significantly, for feature optimization.
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基于增强粒子群优化的目标识别
在可解释的人工智能决策过程中识别最具歧视性的特征是一个具有挑战性的问题。本研究提出粒子群优化(PSO)变体嵌入新的突变和采样迭代操作,用于目标识别中的特征选择,以解决这些挑战。具体来说,我们提出了5种整合了不同突变和采样策略的PSO变体,以选择最具判别性的特征子集对不同的目标进行分类。首先提出了一种突变策略,通过在某些维度上随机翻转粒子位置来产生新的特征交互。此外,所提出的PSO变体在初始搜索过程中通过抽样机制产生子代解,而不是在PSO中进行位置更新进化。研究了两种子代抽样方案,即分别使用利用突变机制获得的个体和全局最优解作为后续搜索过程的起始位置。随后,将几种机器学习算法与提出的PSO变体结合使用以执行对象分类。实验结果表明,本文提出的粒子群算法变体在特征优化方面明显优于原粒子群算法。
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