Khademi April, Krishnan Sridhar
Department of Electrical and Computer Engineering, Ryerson University, 350, Victoria Street, Toronto M5B 2K3, ON, Canada.
Med Biol Eng Comput. 2007 Dec;45(12):1211-22. doi: 10.1007/s11517-007-0273-z. Epub 2007 Oct 23.
This work involves retinal image classification and a novel analysis system was developed. From the compressed domain, the proposed scheme extracts textural features from wavelet coefficients, which describe the relative homogeneity of localized areas of the retinal images. Since the discrete wavelet transform (DWT) is shift-variant, a shift-invariant DWT was explored to ensure that a robust feature set was extracted. To combat the small database size, linear discriminant analysis classification was used with the leave one out method. 38 normal and 48 abnormal (exudates, large drusens, fine drusens, choroidal neovascularization, central vein and artery occlusion, histoplasmosis, arteriosclerotic retinopathy, hemi-central retinal vein occlusion and more) were used and a specificity of 79% and sensitivity of 85.4% were achieved (the average classification rate is 82.2%). The success of the system can be accounted to the highly robust feature set which included translation, scale and semi-rotational, features. Additionally, this technique is database independent since the features were specifically tuned to the pathologies of the human eye.
这项工作涉及视网膜图像分类,并开发了一种新颖的分析系统。该方案从压缩域中从小波系数提取纹理特征,这些特征描述了视网膜图像局部区域的相对同质性。由于离散小波变换(DWT)是移位可变的,因此探索了一种移位不变的DWT以确保提取出稳健的特征集。为了解决数据库规模小的问题,采用线性判别分析分类法和留一法。使用了38例正常病例和48例异常病例(渗出物、大的玻璃膜疣、小的玻璃膜疣、脉络膜新生血管、中央静脉和动脉阻塞、组织胞浆菌病、动脉硬化性视网膜病变、半侧中央视网膜静脉阻塞等),特异性达到79%,敏感性达到85.4%(平均分类率为82.2%)。该系统的成功可归因于高度稳健的特征集,其中包括平移、缩放和半旋转特征。此外,该技术与数据库无关,因为这些特征是专门针对人眼的病理情况进行调整的。