A new approach for biomedical image segmentation: Combined complex-valued artificial neural network case study: Lung segmentation on chest CT images

M. Ceylan, Y. Ozbay, E. Yıldırım
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引用次数: 2

Abstract

The principal goal of the segmentation process is to partition an image into classes or subsets that are homogeneous with respect to one or more characteristics or features. In medical imaging, segmentation is important for feature extraction, image measurements, and image display. This study presents a new version of complex-valued artificial neural networks (CVANN) for the biomedical image segmentation. Proposed new method is called as combined complex-valued artificial neural network (CCVANN) which is a combination of two complex-valued artificial neural networks. To check the validation of proposed method, lung segmentation is realized. For this purpose, we used 32 chest CT images of 6 female and 26 male patients. These images were recorded from Baskent University Radiology Department in Turkey. The accuracy of the CCVANN model is more satisfactory as compared to the single CVANN model.
生物医学图像分割的一种新方法:复合复值人工神经网络——胸部CT图像的肺分割
分割过程的主要目标是将图像划分为相对于一个或多个特征或特征均匀的类或子集。在医学成像中,分割对于特征提取、图像测量和图像显示非常重要。提出了一种用于生物医学图像分割的新型复值人工神经网络(CVANN)。提出的新方法称为复合复值人工神经网络(CCVANN),它是两个复值人工神经网络的组合。为了验证所提方法的有效性,实现了肺的分割。为此,我们使用了6名女性和26名男性患者的32张胸部CT图像。这些图像来自土耳其巴斯肯特大学放射学系。与单一的CVANN模型相比,CCVANN模型的精度更令人满意。
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