基于内容的医学图像检索智能形状特征提取和索引

P. A. Mlsna, N. Sirakov
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引用次数: 15

摘要

我们描述了一种基于医学图像内容的检索系统的新颖有效的方法和算法的发展,该系统能够提取和索引关于区域形状的关键信息。首先,讨论了系统的总体结构和主要组成部分。针对灰度分割区域定位问题,提出了一种基于几何热微分方程的快速活动轮廓法。区域表示涉及一组提取的基于形状的特征。采用一种基于n维特征向量的特征组织技术。图像检索过程比较查询向量与索引特征向量的相似性。利用热微分方程的凸包模型来组织特征索引,以减少搜索空间。已经进行了一些实验来测试和验证我们方法的某些部分。最后;讨论了该系统的优点和缺点以及计算复杂度。
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Intelligent shape feature extraction and indexing for efficient content-based medical image retrieval
We describe the development of novel and efficient approaches and algorithms for a medical image content-based retrieval system capable of extracting and indexing key information about region shape. First, the general structure and the main components of the system are discussed. For grayscale segmentation to locate regions, we have explored a fast active contour approach based on the geometric heat differential equation. Region representation involves a set of extracted shape-based features. A technique for feature organization using N-dimensional feature vectors is employed. The image retrieval process compares similarity of query vectors to the indexed feature vectors. A convex hull model using the heat differential equation is used to organize the index of features to reduce the search space. Some experiments have been performed to test and validate certain portions of our approach. Finally; advantages and disadvantages together with the computational complexity of this system are discussed.
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