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SEGMENTATION OF MITOCHONDRIA IN ELECTRON MICROSCOPY IMAGES USING ALGEBRAIC CURVES

机译:分割线粒体电子显微镜图像使用代数曲线

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摘要

High-resolution microscopy techniques have been used to generate large volumes of data with enough details for understanding the complex structure of the nervous system. However, automatic techniques are required to segment cells and intracellular structures in these multi-terabyte datasets and make anatomical analysis possible on a large scale. We propose a fully automated method that exploits both shape information and regional statistics to segment irregularly shaped intracellular structures such as mitochondria in electron microscopy (EM) images. The main idea is to use algebraic curves to extract shape features together with texture features from image patches. Then, these powerful features are used to learn a random forest classifier, which can predict mitochondria locations precisely. Finally, the algebraic curves together with regional information are used to segment the mitochondria at the predicted locations. We demonstrate that our method outperforms the state-of-the-art algorithms in segmentation of mitochondria in EM images.
机译:高分辨率显微镜技术已被用于生成大量数据,并具有足够的细节以了解神经系统的复杂结构。但是,需要自动技术来分割这些多兆字节数据集中的细胞和细胞内结构,并使大规模的解剖分析成为可能。我们提出了一种全自动的方法,该方法利用形状信息和区域统计信息来分割不规则形状的细胞内结构,例如电子显微镜(EM)图像中的线粒体。主要思想是使用代数曲线从图像块中提取形状特征和纹理特征。然后,这些强大的功能将用于学习随机森林分类器,该分类器可以精确预测线粒体的位置。最后,将代数曲线与区域信息一起用于在预测位置分割线粒体。我们证明了我们的方法在EM图像中的线粒体分割方面优于最新算法。

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