光电工程, 2019, 46 (4): 180466, 网络出版: 2019-05-04   

PCNN与形态匹配增强相结合的 视网膜血管分割

Retinal vascular segmentation combined with PCNN and morphological matching enhancement
作者单位
1 三峡大学计算机与信息学院, 湖北宜昌 443002
2 湖北省水电工程智能视觉监测重点实验室(三峡大学), 湖北宜昌 443002
3 三峡大学第一临床医学院超声科, 湖北宜昌 443002
引用该论文

徐光柱, 王亚文, 胡松, 陈鹏, 周军, 雷帮军. PCNN与形态匹配增强相结合的 视网膜血管分割[J]. 光电工程, 2019, 46(4): 180466.

Xu Guangzhu, Wang Yawen, Hu Song, Chen Peng, Zhou Jun, Lei Bangjun. Retinal vascular segmentation combined with PCNN and morphological matching enhancement[J]. Opto-Electronic Engineering, 2019, 46(4): 180466.

参考文献

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徐光柱, 王亚文, 胡松, 陈鹏, 周军, 雷帮军. PCNN与形态匹配增强相结合的 视网膜血管分割[J]. 光电工程, 2019, 46(4): 180466. Xu Guangzhu, Wang Yawen, Hu Song, Chen Peng, Zhou Jun, Lei Bangjun. Retinal vascular segmentation combined with PCNN and morphological matching enhancement[J]. Opto-Electronic Engineering, 2019, 46(4): 180466.

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