School of Computer Science and Technology, Shandong University, Jinan 250101, China.
Biomed Eng Online. 2013 Jun 28;12:59. doi: 10.1186/1475-925X-12-59.
The neuronal electron microscopy images segmentation is the basic and key step to efficiently build the 3D brain structure and connectivity for a better understanding of central neural system. However, due to the visual complex appearance of neuronal structures, it is challenging to automatically segment membranes from the EM images.
In this paper, we present a fast, efficient segmentation method for neuronal EM images that utilizes hierarchical level features based on supervised learning. Hierarchical level features are designed by combining pixel and superpixel information to describe the EM image. For pixels in a superpixel have similar characteristics, only part of them is automatically selected and used to reduce information redundancy. To each selected pixel, 34 dimensional features are extracted by traditional way. Each superpixel itself is viewed as a unit to extract 35 dimensional features with statistical method. Also, 3 dimensional context level features among multi superpixels are extracted. Above three kinds of features are combined as a feature vector, namely, hierarchical level features to use for segmentation. Random forest is used as classifier and is trained with hierarchical level features to perform segmentation.
In small sample condition and with low-dimensional features, the effectiveness of our method is verified on the data set of ISBI2012 EM Segmentation Challenge, and its rand error, warping error and pixel error attain to 0.106308715, 0.001200104 and 0.079132453, respectively.
Comparing to pixel level or superpixel level features, hierarchical level features have better discrimination ability and the proposed method is promising for membrane segmentation.
神经元电子显微镜图像分割是高效构建 3D 脑结构和连接以更好地理解中枢神经系统的基础和关键步骤。然而,由于神经元结构的视觉复杂性,从 EM 图像中自动分割膜是具有挑战性的。
在本文中,我们提出了一种基于监督学习的基于分层特征的快速、高效的神经元 EM 图像分割方法。分层特征是通过结合像素和超像素信息来设计的,用于描述 EM 图像。对于超像素中的像素,由于它们具有相似的特征,因此仅自动选择和使用其中的一部分来减少信息冗余。对于每个选定的像素,通过传统方法提取 34 维特征。每个超像素本身被视为一个单元,通过统计方法提取 35 维特征。此外,还提取了多超像素之间的 3 维上下文级特征。上述三种特征组合成一个特征向量,即分层特征,用于分割。随机森林被用作分类器,并使用分层特征进行训练以执行分割。
在小样本条件和低维特征下,我们的方法在 ISBI2012 EM 分割挑战赛数据集上得到了验证,其随机误差、变形误差和像素误差分别达到 0.106308715、0.001200104 和 0.079132453。
与像素级或超像素级特征相比,分层特征具有更好的判别能力,所提出的方法在膜分割方面具有广阔的前景。