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Combining wavelets transform and Hu moments with self-organizing maps for medical image categorization

机译:将小波变换和Hu矩与自组织图相结合以进行医学图像分类

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摘要

Images are fundamental sources of information in modern medicine. The images stored in a database and divided in categories are an important step for image retrieval. For an automatic categorization process, detailed analysis is done regarding image representation and generalization method. The baseline method for this process, in the medical image context, is using thumbnails and K-nearest neighbor (KNN), which is easily implemented and has had satisfactory results in literature. This work addresses an alternative method for automatic categorization, which jointly uses discrete wavelet transform with Hu's moments for image representation and self-organizing maps (SOM) neural networks combined with the KNN classifier (SOM-KNN), for medical image categorization. Furthermore, extensive experiments are conducted, to define the best wavelet family and to select the best coefficients set, to consider the remaining wavelet coefficients set (not selected as the best ones) through their Hu's moments, and to carry out a contrastive study with other successful approaches for categorization. The categorization result from a database with 10,000 images in 116 categories yielded 81.8% of correct rate, which is much better than the 67.9% obtained by the baseline method; and the time consumed in classification processing with SOM-KNN is 100 times shorter than KNN.
机译:图像是现代医学信息的基本来源。存储在数据库中并分类的图像是图像检索的重要步骤。对于自动分类过程,对图像表示和泛化方法进行了详细分析。在医学图像上下文中,此过程的基线方法是使用缩略图和K近邻(KNN),该方法易于实现并且在文献中已获得令人满意的结果。这项工作提出了一种自动分类的替代方法,该方法将离散小波变换与Hu矩一起用于图像表示,并将自组织映射(SOM)神经网络与KNN分类器(SOM-KNN)结合在一起用于医学图像分类。此外,进行了广泛的实验,以定义最佳的小波族并选择最佳的系数集,通过胡的矩来考虑剩余的小波系数集(未选为最佳的),并与其他人进行对比研究。成功的分类方法。来自具有116个类别的10,000张图像的数据库的分类结果产生了81.8%的正确率,比基线方法获得的67.9%更好。并且使用SOM-KNN进行分类处理所花费的时间比KNN短100倍。

著录项

  • 来源
    《Journal of electronic imaging》 |2011年第4期|p.043002.1-043002.8|共8页
  • 作者单位

    University of Sao Paulo Department of Electronic Systems Engineering Sao Paulo, Brazil Mackenzie Presbyterian University School of Computing and Informatics Sao Paulo, Brazil;

    University of Sao Paulo Department of Electronic Systems Engineering Sao Paulo, Brazil;

    University of Sao Paulo Medical School Heart Institute (InCor) Sao Paulo, Brazil;

    University of Sao Paulo Department of Electronic Systems Engineering Sao Paulo, Brazil;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 01:17:49

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