An incremental evolutionary method for optimizing dynamic image retrieval systems

M. Nikzad, H. Moghaddam
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引用次数: 1

Abstract

This paper introduces a new incremental evolutionary optimization method based on evolutionary group algorithm (EGA). The EGA was presented as an approach to overcome time-consuming drawbacks related to general evolutionary algorithms in large scale content-based image indexing retrieval (CBIR) optimization tasks. Here, we consider another challengeable limitation of usual evolutionary learning and optimization systems: learning in the scale-varying and dynamic environments. Hence, we present a new strategy based on EGA that is enhanced with the ability of incremental learning. Evaluation results on scale-varying and simulated dynamic CBIR systems show that the proposed method can continuously obtain good performance in the presence of environmental or scale changes.
一种优化动态图像检索系统的增量进化方法
提出了一种新的基于进化群算法的增量进化优化方法。在大规模基于内容的图像索引检索(CBIR)优化任务中,EGA是一种克服一般进化算法耗时缺点的方法。在这里,我们考虑了通常的进化学习和优化系统的另一个具有挑战性的限制:在尺度变化和动态环境中的学习。因此,我们提出了一种基于EGA的新策略,该策略增强了增量学习的能力。对变尺度和模拟动态CBIR系统的评估结果表明,该方法在环境或尺度变化的情况下都能持续获得良好的性能。
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