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Microscopic Image Segementing and Classification with RBF Neural Network

机译:RBF神经网络的显微图像段和分类

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Segmenting and interesting objects from microscopic images and classifying microscopic images are very important for biomedical researching work, which help diagnosis and further biomedical research. However, conventional approaches don't behavior as well as expected when they are applied to solve the problem. We hence propose two methods, radial basis function neural network with fuzzy initialization and graph-based discrete approach, for microscopic image segmenting and classification. The results show that RBF neural network has advantages such as easy to configure and implement, and the training procedure being very fast. In addition, RBF neural network employs fuzzy mean algorithm to accelerate the procedure of parameters and structure selection. Meanwhile, graphed-based discrete approach, which depends on the general formulation of discrete functional regularization on weighted graph, can be used to address cellular extraction segmentation problem.
机译:来自微观图像和分类微观图像的分割和有趣对象对于生物医学研究工作非常重要,这有助于诊断和进一步的生物医学研究。 然而,常规方法不会行为以及应用解决问题时的预期。 因此,我们提出了两种方法,径向基函数神经网络具有模糊初始化和基于图的离散方法,用于显微图像分割和分类。 结果表明,RBF神经网络具有易于配置和实现等优点,并且训练程序非常快。 此外,RBF神经网络采用模糊均值算法来加速参数和结构选择的过程。 同时,基于绘制的离散方法,这取决于加权图的离散功能正则化的一般配方,可用于解决蜂窝提取分割问题。

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