基于纹理的视网膜血管识别方法

V. Gottemukkula, S. Saripalle, Reza Derakshani, S. P. Tankasala
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引用次数: 9

摘要

考虑到纹理特征相对于血管树结构描述符的优势,我们研究了基于灰度协同矩阵(GLCM)和各种小波包能量的纹理特征对视网膜血管进行生物识别分类。小波包能量特征分别由Daubechies、coiflet和反向双正交小波生成。采用Shannon熵和对数熵两种不同的熵方法对小波包分解树进行剪枝。其次,使用包装器方法进行分类引导的特征选择。根据受试者工作曲线下的面积、Bhattacharya和t检验指标对特征进行排序。使用排名列表,包装器方法与Naïve贝叶斯,k-最近邻(k-NN)和支持向量机(SVM)分类器结合使用。将反向双正交2.4小波包分解特征与最近邻分类器结合使用,获得了最佳结果,交叉验证准确率为99.42%,灵敏度和特异性分别为98.33%和99.47%。
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A texture-based method for identificaiton of retinal vasculature
Noting the advantages of texture-based features over the structural descriptors of vascular trees, we investigated texture-based features from gray level cooccurrence matrix (GLCM) and various wavelet packet energies to classify retinal vasculature for biometric identification. Wavelet packet energy features were generated by Daubechies, Coiflets and Reverse Biorthogonal wavelets. Two different entropy methods, Shannon and logarithm of energy, were used to prune wavelet packet decomposition trees. Next, wrapper methods were used for classification-guided feature selection. Features were ranked based on area under the receiver operating curves, Bhattacharya, and t-test metrics. Using the ranked lists, wrapper methods were used in conjunction with Naïve Bayesian, k-nearest neighbor (k-NN), and Support Vector Machine (SVM) classifiers. Best results were achieved by using features from Reverse Biorthogonal 2.4 wavelet packet decomposition in conjunction with a nearest neighbor classifier, yielding a 3-fold cross validation accuracy of 99.42% with a sensitivity and specificity of 98.33% and 99.47% respectively.
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