3D Medical Objects Retrieval Approach Using SPHARMs Descriptor and Network Flow as Similarity Measure

L. Bergamasco, K. Lima, C. Rochitte, Fátima L. S. Nunes
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引用次数: 3

Abstract

The data processing to obtain useful information is a trending topic in the computing knowledge domain since we have observed a high demand arising from society for efficient techniques to perform this activity. Spherical Harmonics (SPHARMs) have been widely used in the three-dimensional (3D) object processing domain. Harmonic coefficients generated by this mathematical theory are considered a robust source of information about 3D objects. In parallel, Ford-Fulkerson is a classical method in graph theory that solves network flows problems. In this work we demonstrate the potential of using SPHARMs along with the Ford-Fulkerson method, respectively as descriptor and similarity measure. This article also shows how we adapted the later to transform it into a similarity measure. Our approach has been validated by a 3D medical dataset composed by 3D left ventricle surfaces, some of them presenting Congestive Heart Failure (CHF). The results indicated an average precision of 90%. In addition, the execution time was 65% lower than a descriptor previously tested. With the results obtained we can conclude that our approach, mainly the Ford-Fulkerson adaptation proposed, has a great potential to retrieve 3D medical objects.
基于SPHARMs描述符和网络流的三维医学对象检索方法
数据处理以获得有用的信息是计算知识领域的一个趋势话题,因为我们已经观察到社会对执行这一活动的有效技术的高需求。球面谐波(SPHARMs)在三维物体处理领域得到了广泛的应用。由该数学理论产生的谐波系数被认为是三维物体信息的可靠来源。与此同时,Ford-Fulkerson是图论中解决网络流问题的经典方法。在这项工作中,我们展示了使用SPHARMs和Ford-Fulkerson方法的潜力,分别作为描述符和相似性度量。本文还展示了我们如何调整后者,将其转换为相似性度量。我们的方法已经被3D左心室表面组成的3D医学数据集验证,其中一些显示充血性心力衰竭(CHF)。结果表明,平均精密度为90%。此外,执行时间比之前测试的描述符低65%。根据所获得的结果,我们可以得出结论,我们的方法,主要是提出的Ford-Fulkerson适应,在检索3D医疗对象方面具有很大的潜力。
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