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An incremental evolutionary learning method for optimizing content-based image indexing algorithms

机译:用于优化基于内容的图像索引算法的增量进化学习方法

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One of the future directions of content-based image retrieval (CBIR) systems is incremental learning of indexing and retrieval algorithms. Optimization of the indexing algorithm ismore difficult compared to the retrieval algorithm enhancement; since each time the indexing algorithm parameters are modified, all images of the reference database should be indexed again. This paper considers, for the first time, a challengeable limitation of actual indexing optimization systems: learning in dynamic and incremental CBIR environments. We introduce a new incremental evolutionary optimization method based on evolutionary group algorithm. The new incremental evolutionary group algorithm (IEGA) overcomes time-consuming drawbacks related to general evolutionary algorithms in large scale content-based image indexing optimization tasks and presents a new strategy that is enhanced with the ability of incremental learning. Evaluation results on some simulated dynamic CBIR systems show that the proposed method can continuously obtain good performance in the presence of environmental or scale changes.
机译:基于内容的图像检索(CBIR)系统的未来方向之一是索引和检索算法的增量学习。与增强检索算法相比,优化索引算法更加困难;由于每次修改索引算法参数,都应再次索引参考数据库的所有图像。本文首次考虑了实际索引优化系统的一个具有挑战性的局限性:在动态和增量CBIR环境中学习。介绍一种基于进化群算法的增量式渐进优化算法。新的增量进化组算法(IEGA)克服了大规模基于内容的图像索引优化任务中与常规进化算法相关的耗时弊端,并提出了一种新的策略,该策略通过增量学习的能力得到了增强。对一些模拟动态CBIR系统的评估结果表明,该方法在环境或规模变化的情况下可以连续获得良好的性能。

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