Cheng Li, Ye Ning, Yu Weimiao, Cheah Andre
BioInformatics Institute, A*STAR, Singapore.
Med Image Comput Comput Assist Interv. 2011;14(Pt 1):637-44. doi: 10.1007/978-3-642-23623-5_80.
Microscopic cellular images segmentation has become an important routine procedure in modern biological research, due to the rapid advancement of fluorescence probes and robotic microscopes in recent years. In this paper we advocate a discriminative learning approach for cellular image segmentation. In particular, three new features are proposed to capture the appearance, shape and context information, respectively. Experiments are conducted on three different cellular image datasets. Despite the significant disparity among these datasets, the proposed approach is demonstrated to perform reasonably well. As expected, for a particular dataset, some features turn out to be more suitable than others. Interestingly, we observe that a further gain can often be obtained on top of using the "good" features, by also retaining those features that perform poorly. This might be due to the complementary nature of these features, as well as the capacity of our approach to better integrate and exploit different sources of information.
由于近年来荧光探针和机器人显微镜的快速发展,微观细胞图像分割已成为现代生物学研究中的一项重要常规程序。在本文中,我们提倡一种用于细胞图像分割的判别式学习方法。具体而言,提出了三个新特征,分别用于捕捉外观、形状和上下文信息。在三个不同的细胞图像数据集上进行了实验。尽管这些数据集之间存在显著差异,但所提出的方法表现出相当不错的性能。正如预期的那样,对于特定的数据集,某些特征比其他特征更合适。有趣的是,我们观察到,除了使用“好”的特征之外,通过保留那些表现不佳的特征,通常还可以进一步提高性能。这可能是由于这些特征的互补性,以及我们的方法能够更好地整合和利用不同信息源的能力。