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A framework to reduce category proliferation in fuzzy ARTMAP classifiers adopted for image retrieval using differential evolution algorithm

机译:使用差分演进算法采用图像检索采用的模糊艺术映射分类器中的类别增殖的框架

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摘要

Image classifiers are largely adopted to categorize a pool of images or patterns in a databank, match category of a query image and to retrieve similar images to query from the category. Fuzzy ARTMAP (FAM) architecture have been widely included for pattern classification in various applications. The major constraint that limits the application of FAM network is category proliferation problem. That is the architecture has the tendency to increase the network size. The issue is because of noisy data, order of presenting training data and/or overlapping categories. In this paper, we propose a new methodology, DE-FAM to handle category proliferation problem by reducing the quantity of categories in the trained FAM architectures. The enhanced generalized performance, reduction in network size and influence of the proposed algorithm in computational cost is demonstrated by adopting the algorithm for image classification and retrieval. Furthermore the comparison of DE-FAM with other algorithms that address the category proliferation problem illustrate the advantages of DE-FAM.
机译:在很大程度上采用图像分类器来对数据库中的图像池或模式进行分类,匹配查询图像的类别,并检索与类别查询的类似图像。模糊艺术图(FAM)架构已广泛用于各种应用中的模式分类。限制FAM网络应用的主要约束是类别增殖问题。这是架构具有增加网络大小的趋势。问题是因为嘈杂的数据,呈现培训数据和/或重叠类别的顺序。在本文中,我们提出了一种新的方法,通过减少训练有素的FAM架构中的类别数量来处理类别扩散问题。通过采用图像分类和检索算法,通过采用算法来证明增强的广义性能,网络大小降低以及所提出的算法的影响。此外,DE-FAM与解决类别增殖问题的其他算法的比较说明了DE-FAM的优势。

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