Analysis of Medical Images Using Fractal Geometry

S. Nayak, J. Mishra
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引用次数: 17

Abstract

Fractal dimension is an emerging research area in order to characterize the complex or irritated objects found in nature. These complex objects are failed to analyze by classical Euclidian geometry. The concept of FD has extensively applied in many areas of application in image processing. The thought of the FD will work based upon the theory of self-similarity because it holds structures that are nested with one another. Over the last years, fractal geometry was applied extensively in medical image analysis in order to detect cancer cells in human body because our vascular system, nervous system, bones, and breast tissue are so complex and irregular in pattern, and also successfully applied in ECG signal, brain imaging for tumor detection, trabeculation analysis, etc. In order to analyze these complex structures, most of the researchers are adopting the concept of fractal geometry by means of box counting technique. This chapter presents an overview of box counting and its improved algorithms and how they work and their application in the field of medical image processing.
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用分形几何分析医学图像
分形维数是一个新兴的研究领域,以表征自然界中发现的复杂或受刺激的物体。这些复杂物体是经典欧几里得几何无法分析的。FD的概念在图像处理的许多应用领域得到了广泛的应用。FD的思想将基于自相似性理论,因为它包含彼此嵌套的结构。近年来,由于我们的血管系统、神经系统、骨骼和乳腺组织的复杂和不规则,分形几何被广泛应用于医学图像分析,以检测人体的癌细胞,并成功地应用于心电信号、脑成像中的肿瘤检测、小梁分析等。为了对这些复杂的结构进行分析,研究者大多采用分形几何的概念,采用盒计数技术。本章概述了盒计数及其改进算法,以及它们如何工作及其在医学图像处理领域的应用。
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