A Hybrid Approach for Segmenting and Validating T1-Weighted Normal Brain MR Images by Employing ACM and ANN

M. M. Ahmed, D. Mohamad, M. Khalil
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引用次数: 4

Abstract

This study focuses on segmentation and validation of brain MR images. Artificial Neural Network (ANN) has been applied to obtain the targeted segments from these images. In preprocessing step for avoiding the chances of misclassification during training of ANN, the unwanted skull tissues were removed by employing active contour modeling (ACM). The removal of these tissues leaves an image containing various regions of interest. For training ANN these distinctive regions of interest were clustered into their respective regions by employing KMeans algorithm. Then a neural net work is trained on this classified data which eventually facilitated in obtaining the desired segments. The boundaries of these segments were detected and the pixels constituting these boundaries were counted. For validating the segments produced by ANN, ground truth segments were taken under consideration. The boundaries of these ground truth segments were also detected and pixels forming the edges of these segments were counted. Finally a comparison was drawn between the pixel counts of ANN produced segments and ground truth segments. On the basis of this comparison, accuracy of ANN is calculated.
基于ACM和ANN的t1加权正常脑MR图像分割与验证混合方法
本研究的重点是脑磁共振图像的分割和验证。应用人工神经网络(ANN)从这些图像中获取目标片段。在预处理阶段,为了避免人工神经网络训练过程中的误分类机会,采用主动轮廓建模(ACM)去除不需要的颅骨组织。去除这些组织后,留下的图像包含不同的感兴趣区域。为了训练人工神经网络,使用KMeans算法将这些不同的感兴趣区域聚类到各自的区域中。然后在分类数据的基础上训练神经网络,最终得到期望的片段。检测这些片段的边界,并对构成这些边界的像素进行计数。为了验证人工神经网络生成的片段,考虑了地面真实片段。检测这些地面真值段的边界,并对构成这些段边缘的像素进行计数。最后对人工神经网络生成的片段与地面真值片段的像素数进行了比较。在此基础上,计算了人工神经网络的准确率。
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