Segmentation of Dense 2D Bacilli Populations

P. Vallotton, L. Turnbull, C. Whitchurch, Lisa Mililli
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引用次数: 13

Abstract

Bacteria outnumber all other known organisms by far so there is considerable interest in characterizing them in detail and in measuring their diversity, evolution, and dynamics. Here, we present a system capable of identifying rod-like bacteria (bacilli) correctly in high resolution phase contrast images. We use a probabilistic model together with several purpose-designed image features in order to split bacteria at the septum consistently. Our method commits less than 1% error on test images. Our method should also be applicable to study dense 2D systems composed of elongated elements, such as some viruses, molecules, parasites (plasmodium, euglena), diatoms, and crystals.
密集二维芽孢杆菌种群的分割
到目前为止,细菌的数量超过了所有其他已知的生物,因此人们对详细描述它们的特征以及测量它们的多样性、进化和动态非常感兴趣。在这里,我们提出了一个系统能够识别棒状细菌(杆菌)正确在高分辨率相衬图像。我们使用概率模型和几个专门设计的图像特征,以便在隔膜上一致地分裂细菌。我们的方法在测试图像上的误差小于1%。我们的方法也应该适用于研究由细长元素组成的密集二维系统,如某些病毒、分子、寄生虫(疟原虫、绿藻)、硅藻和晶体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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