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Region Quad-Tree Decomposition Based Edge Detection for Medical Images

机译:基于区域四叉树分解的医学图像边缘检测

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Edge detection in medical images has generated significant interest in the medical informatics community, especially in recent years. With the advent of imaging technology in biomedical and clinical domains, the growth in medical digital images has exceeded our capacity to analyze and store them for efficient representation and retrieval, especially for data mining applications. Medical decision support applications frequently demand the ability to identify and locate sharp discontinuities in an image for feature extraction and interpretation of image content, which can then be exploited for decision support analysis. However, due to the inherent high dimensional nature of the image content and the presence of ill-defined edges, edge detection using classical procedures is difficult, if not impossible, for sensitive and specific medical informatics-based discovery. In this paper, we propose a new edge detection technique based on the regional recursive hierarchical decomposition using quadtree and post-filtration of edges using a finite difference operator. We show that in medical images of common origin, focal and/or penumbral blurred edges can be characterized by an estimable intensity gradient. This gradient can further be used for dismissing false alarms. A detailed validation and comparison with related works on diabetic retinopathy images and CT scan images show that the proposed approach is efficient and accurate.
机译:医学图像中的边缘检测在医学信息学界引起了极大的兴趣,尤其是近年来。随着生物医学和临床领域中成像技术的出现,医学数字图像的增长已经超出了我们分析和存储图像以进行有效表示和检索(尤其是用于数据挖掘应用)的能力。医疗决策支持应用程序经常需要具有识别和定位图像中不连续点的功能,以进行特征提取和图像内容解释,然后可以将其用于决策支持分析。但是,由于图像内容固有的高维特性以及存在边界不明确的边缘,对于基于敏感和特定医学信息学的发现,使用经典程序进行边缘检测非常困难,即使不是不可能。在本文中,我们提出了一种新的边缘检测技术,该技术基于使用四叉树的区域递归层次分解以及使用有限差分算子对边缘进行后过滤的方法。我们表明,在共同起源的医学图像中,焦点和/或半影模糊的边缘可以通过可估计的强度梯度来表征。该梯度可以进一步用于消除错误警报。详细的验证和与糖尿病视网膜病变图像和CT扫描图像相关工作的比较表明,该方法是有效和准确的。

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