Fractal analysis to BEMD’s IMFs: Application CT-Scan

F. Ghazil, A. Benkuider, F. Ayoub, M. Zraidi, K. Ibrahimi
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Abstract

Osteoporosis is a serious disease due to the fractures it causes which can lead to pain, impotence, loss of independence and excess mortality (femoral neck fractures). In addition, it is a disease with a high recurrence rate and is age-specific. Therefore, the impact of osteoporosis on the already sensitive healthcare system will increase, and thus several preventive measures can be taken to reduce its impact Based on texture analysis, which is crucial for image interpretation in the biomedical domain. We propose a fresh approach for classifying medical images in this context using bidimensional empirical multimodal decomposition (BEMD), this approach is based on the fractal analysis of BIMFs. BEMD is an extension of the one-dimensional case because it has proven to be an adaptive way to represent non-stationary and non-linear signals. Its application to image processing breaks down a image into the total of a number of hierarchical elements “bidimensional intrinsic mode functions (BIMFs)” and residues and the decomposition procedure is iterative. In order to objectively assess the effectiveness of the various BIMF modes and to characterize two states: osteoporotic and healthy, the fractal dimension was calculated for each BIMF using the DBC “Differential Box Counting” method. This novel strategy was applied on a database of CT-Scan medical images of bone textures which contains images of normal and pathological cases. Experimental results indicate that the third mode BIMF achieves higher separation rates compared to the other mode between normal and osteoporotic cases. We use classification rate evaluation criteria, such that the classification rate is given by KNN
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对 BEMD 的 IMF 进行分形分析:应用 CT 扫描
骨质疏松症是一种严重的疾病,因为骨折会导致疼痛、阳痿、丧失独立能力和过高的死亡率(股骨颈骨折)。此外,骨质疏松症的复发率很高,而且具有年龄特异性。因此,骨质疏松症对本已敏感的医疗保健系统的影响将会增加,因此可以采取几种预防措施来减少其影响 基于纹理分析,这对生物医学领域的图像解读至关重要。在此背景下,我们提出了一种使用二维经验多模态分解(BEMD)对医学图像进行分类的全新方法,这种方法基于 BIMF 的分形分析。BEMD 是一维情况的扩展,因为它已被证明是表示非稳态和非线性信号的一种自适应方法。它在图像处理中的应用是将图像分解为若干层次元素 "二维本征模态函数(BIMF)"和残差的总和,分解过程是迭代的。为了客观地评估各种 BIMF 模式的有效性,并描述骨质疏松和健康这两种状态,使用 DBC "差分盒计数 "方法计算了每个 BIMF 的分形维度。这种新颖的策略被应用于包含正常和病理病例图像的骨纹理 CT 扫描医学图像数据库。实验结果表明,与其他模式相比,第三种模式 BIMF 在正常病例和骨质疏松病例之间实现了更高的分离率。我们使用分类率评价标准,分类率由 KNN 给出
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