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Image segmentation of embryonic plant cell using pulse-coupled neural networks 被引量:28

Image segmentation of embryonic plant cell using pulse-coupled neural networks
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摘要 Traditional image segmentation algorithms exhibit weak performance for plant cells which have complex structure. On the other hand, pulse-coupled neural network (PCNN) based on Eckhorn’s model of the cat visual cortex should be suitable to the segmentation of plant cell image. But the present theories cannot explain the relationship between the parameters of PCNN mathematical model and the effect of segmentation. Satisfactory results usually require time-consuming selection of experimental parameters. Mean-while, in a proper, selected parametric model, the number of iteration determines the segmented effect evaluated by visual judgment, which decreases the efficiency of image segmentation. To avoid these flaws, this note proposes a new PCNN algorithm for automatically segmenting plant embryonic cell image based on the maximum entropy principle. The algorithm produces a desirable result. In addition, a model with proper parameters can automatically determine the number of iteration, avoid visual judgment, Traditional image segmentation algorithms exhibit weak performance for plant cells which have complex structure. On the other hand, pulse-coupled neural network (PCNN) based on Eckhorn's model of the cat visual cortex should be suitable to the segmentation of plant cell image. But the present theories cannot explain the relationship between the parameters of PCNN mathematical model and the effect of segmentation. Satisfactory results usually require time-consuming selection of experimental parameters. Meanwhile, in a proper, selected parametric model, the number of iteration determines the segmented effect evaluated by visual judgment, which decreases the efficiency of image segmentation. To avoid these flaws, this note proposes a new PCNN algorithm for automatically segmenting plant embryonic cell image based on the maximum entropy principle. The algorithm produces a desirable result. In addition, a model with proper parameters can automatically determine the number of iteration, avoid visual judgment, enhance the speed of segmentation and will be utilized subsequently by accurate quantitative analysis of micro-molecules of plant cell. So this algorithm. is valuable for theoretical investigation and application of PCNN.
出处 《Chinese Science Bulletin》 SCIE EI CAS 2002年第2期167-172,共6页
基金 This work was supported by the National Natural Science Foundation of China (Grant No. 39770375) the Natural Science Foundation of Gansu Province (Grant No. ZS001-A25-008-Z).
关键词 pulse-coupled neural network (PCNN) plant EMBRYONIC cell IMAGE segmentation entropy. pulse-coupled neural network (PCNN) plant embryonic cell image segmentation entropy
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参考文献1

  • 1Evangelia Micheli-Tzanakou,Hassan Sheikh,Bin Zhu.Neural Networks and Blood Cell Identification[J].Journal of Medical Systems.1997(4)

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