基于Gabor小波和主成分分析的颈动脉斑块图像识别

M. Afandi, Hendra Kusuma, T. A. Sardjono
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引用次数: 2

摘要

人类颈部内有一对血管,用来向大脑输送血液,它们被称为颈动脉。人体内的胆固醇会形成斑块,导致颈动脉堵塞,诱发动脉粥样硬化、中风和心脏病,是一种可致人死亡的危险疾病。如果在一定时间内不被发现,颈动脉就会破裂。在临床实践中,超声的可用性广泛,也是一种低成本的观察颈动脉斑块的方法。不幸的是,颈动脉超声斑块图像多样,噪声大,不易识别。开发从超声图像中识别斑块的计算技术也很困难。因此,开发一种可在计算机系统中实现的从超声图像中识别斑块的最佳方法是一项挑战。特征提取是模式识别中众多可用技术中的一种方法,它可以通过多种方式获得。本文将Gabor小波作为一种强大的特征提取方法应用于斑块特征识别。然而,Gabor小波特征提取会产生巨大的数据,因此为了降低数据维数,采用主成分分析(PCA)来降低数据维数。该方法对颈动脉斑块进行识别,采用8个方向和3个尺度的Gabor库,具有100%的特征向量配置,识别率达到100%。在本研究中,我们使用了24张颈动脉训练图像。
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Carotid Artery Plaque Image Recognition Using Gabor Wavelet and Principal Component Analysis
A pair of blood vessels inside of the human neck that serves to deliver blood to the brain is called carotid artery. Cholesterol in human body can form plaque, causes blockage to carotid artery that evoke atherosclerosis, stroke and heart disease which is a dangerous disease that can lead to death. If in certain long time it is not discovered, carotid artery will rupture. In clinical practice, the availability of ultrasound is wide also it is a low cost method to observe plaque in carotid artery. Unfortunately, ultrasound plaque images in carotid artery is diverse, noisy and not easy to be identified. It is also hard to develop computational techniques for recognizing plaque from ultrasound images. Therefore, it is a challenge to develop an optimal method that can be implemented in computer system to recognize plaque from ultrasound images. One method from many techniques available in pattern recognition is a feature extraction which can be obtained from various ways. In this work, A Gabor wavelet which is one of the powerful method in feature extraction is applied to recognize plaque characteristics. However a Gabor wavelet feature extraction will result a huge data, therefore to reduce the data dimension, the Principal Component Analysis (PCA) is applied to reduce such huge data. The result of this method for recognize plaque in carotid artery is satisfied with 100% recognition rate by using 8 orientations and 3 scales bank of Gabor with 100% eigenvectors configuration. In this research we used 24 carotid artery training images.
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