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Automatic image annotation using feature selection based on improving quantum particle swarm optimization

机译:基于特征粒子群优化的特征选择自动图像标注

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摘要

Automatic image annotation (AIA) is a task of assigning one or more semantic concepts to a given image and a promising way to achieve more effective image retrieval and analysis. It is a typical classification problem. Due to the semantic gap between low-level visual features and high-level image semantic, the performances of many existing image annotation algorithms are not satisfactory. This paper presents a novel AIA scheme based on improved quantum particle swarm optimization (IQPSO) algorithm for visual features selection (VFS) and an ensemble stratagem based on boosting technique to improve performance of image annotation approach. To maintain the population diversity, the measure method of population diversity and improvement operation are proposed. To achieve better performance of AIA scheme, the measure of population diversity is as a control condition of VFS process. The classification result of an ensemble classifier is as the final annotation result rather than individual classifier. The experimental results confirm that the proposed AIA scheme is very effectiveness. When using proposed AIA scheme over three image datasets respectively, the annotation results are satisfactory.
机译:自动图像注释(AIA)是将一个或多个语义概念分配给给定图像的任务,是一种实现更有效的图像检索和分析的有前途的方法。这是一个典型的分类问题。由于低级视觉特征和高级图像语义之间的语义鸿沟,许多现有图像标注算法的性能都不令人满意。本文提出了一种基于改进的量子粒子群算法(IQPSO)的视觉特征选择(VFS)算法和基于提升技术的整体策略的AIA方案,以提高图像标注方法的性能。为了维护人口多样性,提出了人口多样性的度量方法和改进措施。为了获得更好的AIA计划性能,人口多样性的度量是VFS过程的控制条件。整体分类器的分类结果是最终的注释结果,而不是单个分类器。实验结果证实了所提出的AIA方案非常有效。当分别对三个图像数据集使用建议的AIA方案时,注释结果令人满意。

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