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Automatic Segmentation of Breast Tumor in Ultrasound Image with Simplified PCNN and Improved Fuzzy Mutual Information  会议论文  

  • 编号:
    66750577-a6e6-47ed-9f22-e611a2c91aa1
  • 作者:
    Shi, Jun;Xiao, Zhiheng;Zhou, Shichong(周世崇)
  • 作者单位:
    [Shi, Jun; Xiao, Zhiheng] Shanghai Univ, Sch Commun & Informat Engn, Shanghai 200072, Peoples R China; [Zhou, Shichong] Fudan Univ, Dept Ultrasound, Canc Hosp, Shanghai 200032, Peoples R China
  • 关键词:
    pulse coupled neural network; fuzzy mutual information; image segmentation; breast; ultrasound image
  • 会议名称:
    VISUAL COMMUNICATIONS AND IMAGE PROCESSING 2010
  • 出版信息:
    2010 年 7744 卷
  • 摘要:

    Image segmentation is very important in the field of image processing. The pulse coupled neural network (PCNN) has been efficiently applied to image processing, especially for image segmentation. In this study, a simplified PCNN (SPCNN) model is proposed, the fuzzy mutual information (FMI) is improved as optimization criterion for S-PCNN, and then the S-PCNN and improved FMI (IFMI) based segmentation algorithm is proposed and applied for the segmentation of breast tumor in ultrasound image. To validate the proposed algorithm, a comparative experiment is implemented to segment breast images not only by our proposed algorithm, but also by the improved C-V algorithm, the max-entropybased PCNN algorithm, the MI-based PCNN algorithm, and the IFMI-based PCNN algorithm. The results show that the breast lesions are well segmented by the proposed algorithm without image preprocessing, with the mean Hausdorff of distance of 5.631 +/- 0.822, mean average minimum Euclidean distance of 0.554 +/- 0.049, mean Tanimoto coefficient of 0.961 +/- 0.019, and mean misclassified error of 0.038 +/- 0.004. These values of evaluation indices are better than those of other segmentation algorithms. The results indicate that the proposed algorithm has excellent segmentation accuracy and strong robustness against noise, and it has the potential for breast ultrasound computer-aided diagnosis (CAD).

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