基于径向基函数的接受野图像分割

D. Kovacevic, S. Lončarić
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引用次数: 19

摘要

提出了一种新的CT头部图像自动分割方法。这些图像来自于自发性脑出血(ICH)患者。分割的结果是图像被划分为五个感兴趣的区域,对应于四种组织类别(头骨,大脑,钙化和ICH)和背景。一旦图像被分割,就可以计算各种出血区域参数,如大小、位置等。分割分为三个主要步骤。在第一阶段,特征提取和归一化是使用接收场(RF)进行的。通过实验确定了最佳的射频结构。第二阶段使用径向基函数(RBF)人工神经网络对像素进行分类。为了确定最优的基函数、网络大小和训练算法,对不同RBF网络拓扑进行了实验。将RBF网络的分割结果与多层感知器神经网络(MLP)的分割结果进行比较。第三阶段,利用专家系统对RBF网络得到的图像区域进行标记。实验表明,该方法能够成功地进行图像分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radial basis function-based image segmentation using a receptive field
The paper presents a novel method for CT head image automatic segmentation. The images are obtained from patients having a spontaneous intra-cerebral brain hemorrhage (ICH). The results of the segmentation are images partitioned into five regions of interest corresponding to four tissue classes (skull, brain, calcifications and ICH) and background. Once the images are segmented it is possible to calculate various hemorrhage region parameters such as size, position, etc. The segmentation is performed in three major steps. In the first phase feature extraction and normalization is performed using a receptive field (RF). Experiments were performed to determine the optimal RF structure. Pixels are classified in the second phase using the radial basis function (RBF) artificial neural network. Experiments with different RBF network topologies were performed in order to determine the optimal basis functions, network size and a training algorithm. The segmentation results obtained using the RBF network were compared with results obtained by multi-layer perceptron neural network (MLP). In the third phase the image regions obtained by the RBF network were labeled using an expert system. Experiments have shown that the proposed method successfully performs image segmentation.
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