中国激光, 2018, 45 (3): 0307013, 网络出版: 2018-03-06   

基于分水岭及半监督最小误差重构的荧光微球分割及分类方法 下载: 897次

Fluorescent Microsphere Segmentation and Classification Based on Watershed and Semi-Supervised Minor Reconstruction Error
作者单位
重庆大学光电技术及系统教育部重点实验室, 重庆 400044
引用该论文

黄鸿, 金莹莹, 李政英, 段宇乐, 石光耀. 基于分水岭及半监督最小误差重构的荧光微球分割及分类方法[J]. 中国激光, 2018, 45(3): 0307013.

Huang Hong, Jin Yingying, Li Zhengying, Duan Yule, Shi Guangyao. Fluorescent Microsphere Segmentation and Classification Based on Watershed and Semi-Supervised Minor Reconstruction Error[J]. Chinese Journal of Lasers, 2018, 45(3): 0307013.

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黄鸿, 金莹莹, 李政英, 段宇乐, 石光耀. 基于分水岭及半监督最小误差重构的荧光微球分割及分类方法[J]. 中国激光, 2018, 45(3): 0307013. Huang Hong, Jin Yingying, Li Zhengying, Duan Yule, Shi Guangyao. Fluorescent Microsphere Segmentation and Classification Based on Watershed and Semi-Supervised Minor Reconstruction Error[J]. Chinese Journal of Lasers, 2018, 45(3): 0307013.

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