应用同步振荡器的CNN分析生物医学纹理图像

M. Strzelecki, Joonwhoan Lee, SungHwan Jeong
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引用次数: 1

摘要

本文主要研究生物医学图像的分析,包括纹理图像的分析。提出了一种基于同步振子网络的分割方法。振荡器网络可以看作是CNN的一个特例。它的振荡动态允许对形成视觉场景的物体的不同特征进行编码,从而使这些网络适合于中级图像处理,如图像分割。振荡器网络可以处理二维和三维图像。在使用不同模态获取的多幅生物医学图像上进行了实验。对振荡器网络的工作原理进行了描述和讨论。给出了二维和三维样本生物医学图像的分割结果,并与基于多层感知器网络(MLP)的图像分割进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of biomédical textured images with application of synchronized oscillator-based CNN
This paper is focused on the analysis of biomedical images, including textured ones. A segmentation method, based on network of synchronized oscillators is presented. Oscillator networks can be considered as a special case of the CNN. Its oscillatory dynamics allows encoding the different features of objects forming the visual scene, thus makes these network suitable for medium level image processing, like image segmentation. Oscillator networks can process both two and three dimensional images. The proposed method was tested on several biomedical images acquired with the use of different modalities. Principles of operation of the oscillator networks are described and discussed. Obtained segmentation results for sample 2D and 3D biomedical images are presented and compared to image segmentation based on multilayer perceptron network (MLP).
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