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一种使用强度邻域的自动生物医学图像分割通用系统。

A general system for automatic biomedical image segmentation using intensity neighborhoods.

作者信息

Chen Cheng, Ozolek John A, Wang Wei, Rohde Gustavo K

机构信息

Department of Biomedical Engineering, Center for Bioimage Informatics, Carnegie Mellon University, Pittsburgh, PA 15213, USA.

出版信息

Int J Biomed Imaging. 2011;2011:606857. doi: 10.1155/2011/606857. Epub 2011 Jun 23.

Abstract

Image segmentation is important with applications to several problems in biology and medicine. While extensively researched, generally, current segmentation methods perform adequately in the applications for which they were designed, but often require extensive modifications or calibrations before being used in a different application. We describe an approach that, with few modifications, can be used in a variety of image segmentation problems. The approach is based on a supervised learning strategy that utilizes intensity neighborhoods to assign each pixel in a test image its correct class based on training data. We describe methods for modeling rotations and variations in scales as well as a subset selection for training the classifiers. We show that the performance of our approach in tissue segmentation tasks in magnetic resonance and histopathology microscopy images, as well as nuclei segmentation from fluorescence microscopy images, is similar to or better than several algorithms specifically designed for each of these applications.

摘要

图像分割对于生物学和医学中的几个问题的应用很重要。虽然已经进行了广泛的研究,但一般来说,当前的分割方法在其设计的应用中表现良好,但在用于不同应用之前通常需要进行大量修改或校准。我们描述了一种方法,只需进行少量修改,就可以用于各种图像分割问题。该方法基于一种监督学习策略,该策略利用强度邻域根据训练数据为测试图像中的每个像素分配其正确的类别。我们描述了对旋转和尺度变化进行建模的方法以及用于训练分类器的子集选择。我们表明,我们的方法在磁共振和组织病理学显微镜图像中的组织分割任务以及荧光显微镜图像中的细胞核分割任务中的性能与专门为这些应用设计的几种算法相似或更好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4db6/3132524/89c51b8d9824/IJBI2011-606857.001.jpg

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