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Automated retinal blood vessels segmentation based on simplified PCNN and fast 2D-Otsu algorithm 被引量:9

Automated retinal blood vessels segmentation based on simplified PCNN and fast 2D-Otsu algorithm
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摘要 According to the characteristics of dynamic firing in pulse coupled neural network (PCNN) and regional configuration in retinal blood vessel network, a new method combined with simplified PCNN and fast 2D-Otsu algorithm was proposed for automated retinal blood vessels segmentation. Firstly, 2D Gaussian matched filter was used to enhance the retinal images and simplified PCNN was employed to segment the blood vessels by firing neighborhood neurons. Then, fast 2D-Otsu algorithm was introduced to search the best segmentation results and iteration times with less computation time. Finally, the whole vessel network was obtained via analyzing the regional connectivity. Experiments implemented on the public Hoover database indicate that this new method gets a 0.803 5 true positive rate and a 0.028 0 false positive rate on an average. According to the test results, compared with Hoover algorithm and method of PCNN and 1D-Otsu, the proposed method shows much better performance. According to the characteristics of dynamic firing in pulse coupled neural network (PCNN) and regional configuration in retinal blood vessel network, a new method combined with simplified PCNN and fast 2D-Otsu algorithm was proposed for automated retinal blood vessels segmentation. Firstly, 2D Gaussian matched filter was used to enhance the retinal images and simplified PCNN was employed to segment the blood vessels by firing neighborhood neurons. Then, fast 2D-Otsu algorithm was introduced to search the best segmentation results and iteration times with less computation time. Finally, the whole vessel network was obtained via analyzing the regional connectivity. Experiments implemented on the public Hoover database indicate that this new method gets a 0.803 5 true positive rate and a 0.028 0 false positive rate on an average. According to the test results, compared with Hoover algorithm and method of PCNN and 1D-Otsu, the proposed method shows much better performance.
作者 姚畅 陈后金
出处 《Journal of Central South University》 SCIE EI CAS 2009年第4期640-646,共7页 中南大学学报(英文版)
基金 Project (60872081) supported by the National Natural Science Foundation of China Project (50051) supported by the Program for New Century Excellent Talents in University Project (4092034) supported by the Natural Science Foundation of Beijing
关键词 视网膜血管 PCNN 算法 分割 二维 耦合神经网络 假阳性率 视网膜图像 blood vessel segmentation pulse coupled neural network (PCNN) Otsu neuron
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