Ety Sutanty, Dewi A. Rahayu, Rodiah, Diana Tri Susetianingtias, S. Madenda
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引用次数: 10
摘要
在本研究中,将对视网膜血管眼底图像进行分割。此外,还将确定分割血管图像的分岔点。本研究使用的数据来自DRIVE (Digital Retinal Images for Vessel Extraction)数据集的眼底图像数据库。预处理阶段包括绿色通道提取、直方图均衡化和视盘消除等步骤。同时,结合两种滤波方法进行分割阶段。这两种方法分别是高斯滤波的中值法和导数法。采用中值滤波对视网膜眼底图像中的硬渗出物、软渗出物、斑点性出血物等噪声进行滤波。结合这两种滤波方法,确定了分割血管图像的分岔点。分岔点和血管分割结果是视网膜眼底图像的两个独特参数。这些参数最终将被用作先进研究的独特特征,这是一个基于他/她独特的视网膜模式来识别个体的生物识别系统。
Retinal blood vessel segmentation and bifurcation detection using combined filters
In this research, retinal blood vessel fundus images will be segmented. Moreover, bifurcation point of the segmented blood vessel images will be determined. The data used for this research was obtained from fundus image database of DRIVE (Digital Retinal Images for Vessel Extraction) dataset. The preprocessing phases contain of several steps such as green channel extraction, histogram equalization and optic disc elimination. Meanwhile, the segmentation phase was performed by combining two filtering methods. These methods are median and derivative of Gaussian filter. Median filter was used to reduce the noise on retinal fundus image such as hard and soft exudates as well as dot and blot hemorrhages. Combination of these two filtering methods were also employed to determine the bifurcation point of segmented blood vessel image. The bifurcation points and the result from blood vessel segmentation were among two of the unique parameters of retinal fundus image. These parameters will be used eventually as unique features of the advanced research which is a biometric system to identify an individual based on his/her unique retinal pattern.