使用增强决策残桩的神经细胞膜自动标记

K. Venkataraju, António R. C. Paiva, E. Jurrus, T. Tasdizen
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引用次数: 29

摘要

为了更好地理解中枢神经系统,神经生物学家需要从电子显微镜图像中重建潜在的神经回路。其中一个必要的任务是分割单个神经元。为此,我们提出了一种监督学习方法来检测细胞膜。分类器使用AdaBoost进行局部和上下文特征的训练。选择这些特征是为了突出细胞膜的线特征。结果表明,使用上下文位置的特征可以在分类中利用更多的信息。再加上AdaBoost分类器的非线性识别能力,这比以前使用的方法有了明显的改进。
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Automatic markup of neural cell membranes using boosted decision stumps
To better understand the central nervous system, neurobiologists need to reconstruct the underlying neural circuitry from electron microscopy images. One of the necessary tasks is to segment the individual neurons. For this purpose, we propose a supervised learning approach to detect the cell membranes. The classifier was trained using AdaBoost, on local and context features. The features were selected to highlight the line characteristics of cell membranes. It is shown that using features from context positions allows for more information to be utilized in the classification. Together with the nonlinear discrimination ability of the AdaBoost classifier, this results in clearly noticeable improvements over previously used methods.
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