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Multi-panel medical image segmentation framework for image retrieval system

机译:用于图像检索系统的多面板医学图像分割框架

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摘要

The automatic segmentation of multi-panel medical images into sub-images improves the retrieval accuracy of medical image retrieval systems. However, the accuracy and efficiency of the available multi-panel medical image segmentation techniques are not satisfactory for multi-panel images containing homogenous color inter-panel borders and image boundary, heterogeneous color inter-panel borders, small size sub-images, or numerous number of sub-images. In order to improve the accuracy and efficiency, a Multi-panel Medical Image Segmentation Framework (MIS-Framework) is proposed and implemented based on locating the longest inter-panel border inside the boundary of the input image. We evaluated the proposed framework on a subset of imageCLEF 2013 dataset containing 2407 images. The proposed framework showed promising experimental results in terms of accuracy and efficiency on single panel as well as multi-panel image class identification and on sub-image separation as compared to the available techniques.
机译:将多面板医学图像自动分割为子图像可提高医学图像检索系统的检索精度。但是,可用的多面板医学图像分割技术的准确性和效率对于包含均一颜色面板间边界和图像边界,异构颜色面板间边界,小尺寸子图像或大量子图像的多面板图像而言并不令人满意。子图像数。为了提高准确性和效率,基于在输入图像边界内定位最长的面板间边界,提出并实现了多面板医学图像分割框架(MIS-Framework)。我们在包含2407张图像的imageCLEF 2013数据集的子集上评估了提出的框架。与现有技术相比,所提出的框架在单面板,多面板图像分类识别以及子图像分离方面的准确性和效率方面显示出令人鼓舞的实验结果。

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