a School of Software Engineering , Huazhong University of Science and Technology , Wuhan , China.
b School of Information , Qilu University of Technology , Jinan , China.
Comput Assist Surg (Abingdon). 2017 Dec;22(sup1):170-175. doi: 10.1080/24699322.2017.1389395. Epub 2017 Oct 28.
Image segmentation plays a crucial role in various biomedical applications. In general, the segmentation of brain Magnetic Resonance (MR) images is mainly used to represent the image with several homogeneous regions instead of pixels for surgical analyzing and planning. This paper proposes a new approach for segmenting MR brain images by using pseudo-color based segmentation with Non-symmetry and Anti-packing Model with Squares (NAMS). First of all, the NAMS model is presented. The model can represent the image with sub-patterns to keep the image content and largely reduce the data redundancy. Second, the key idea is proposed that convert the original gray-scale brain MR image into a pseudo-colored image and then segment the pseudo-colored image with NAMS model. The pseudo-colored image can enhance the color contrast in different tissues in brain MR images, which can improve the precision of segmentation as well as directly visual perceptional distinction. Experimental results indicate that compared with other brain MR image segmentation methods, the proposed NAMS based pseudo-color segmentation method performs more excellent in not only segmenting precisely but also saving storage.
图像分割在各种生物医学应用中起着至关重要的作用。一般来说,磁共振(MR)脑图像的分割主要用于用几个均匀区域表示图像,而不是用像素表示,以便进行手术分析和规划。本文提出了一种新的方法,通过使用基于伪彩色的非对称和反分组模型与正方形(NAMS)进行分割。首先,提出了 NAMS 模型。该模型可以用子模式来表示图像,以保持图像内容,并大大减少数据冗余。其次,提出了一个关键思想,即将原始灰度脑 MR 图像转换为伪彩色图像,然后用 NAMS 模型对伪彩色图像进行分割。伪彩色图像可以增强脑 MR 图像中不同组织之间的颜色对比度,从而提高分割的精度以及直接的视觉感知区分。实验结果表明,与其他脑 MR 图像分割方法相比,基于 NAMS 的伪彩色分割方法在精确分割和节省存储方面表现更出色。