期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
A Multi-Scale Network with the Encoder-Decoder Structure for CMR Segmentation 被引量:1
1
作者 chaoyang xia Jing Peng +1 位作者 Zongqing Ma xiaojie Li 《Journal of Information Hiding and Privacy Protection》 2019年第3期109-117,共9页
Cardiomyopathy is one of the most serious public health threats.The precise structural and functional cardiac measurement is an essential step for clinical diagnosis and follow-up treatment planning.Cardiologists are ... Cardiomyopathy is one of the most serious public health threats.The precise structural and functional cardiac measurement is an essential step for clinical diagnosis and follow-up treatment planning.Cardiologists are often required to draw endocardial and epicardial contours of the left ventricle(LV)manually in routine clinical diagnosis or treatment planning period.This task is time-consuming and error-prone.Therefore,it is necessary to develop a fully automated end-to-end semantic segmentation method on cardiac magnetic resonance(CMR)imaging datasets.However,due to the low image quality and the deformation caused by heartbeat,there is no effective tool for fully automated end-to-end cardiac segmentation task.In this work,we propose a multi-scale segmentation network(MSSN)for left ventricle segmentation.It can effectively learn myocardium and blood pool structure representations from 2D short-axis CMR image slices in a multi-scale way.Specifically,our method employs both parallel and serial of dilated convolution layers with different dilation rates to capture multi-scale semantic features.Moreover,we design graduated up-sampling layers with subpixel layers as the decoder to reconstruct lost spatial information and produce accurate segmentation masks.We validated our method using 164 T1 Mapping CMR images and showed that it outperforms the advanced convolutional neural network(CNN)models.In validation metrics,we archived the Dice Similarity Coefficient(DSC)metric of 78.96%. 展开更多
关键词 Cardiac magnetic resonance imaging MULTI-SCALE semantic segmentation convolutional neural networks
下载PDF
Make U-Net Greater: An Easy-to-Embed Approach to Improve Segmentation Performance Using Hypergraph
2
作者 Jing Peng Jingfu Yang +5 位作者 chaoyang xia xiaojie Li Yanfen Guo Ying Fu Xinlai Chen Zhe Cui 《Computer Systems Science & Engineering》 SCIE EI 2022年第7期319-333,共15页
semantics information while maintaining spatial detail con-texts.Long-range context information plays a crucial role in this scenario.How-ever,the traditional convolution kernel only provides the local and small size ... semantics information while maintaining spatial detail con-texts.Long-range context information plays a crucial role in this scenario.How-ever,the traditional convolution kernel only provides the local and small size of the receptivefield.To address the problem,we propose a plug-and-play module aggregating both local and global information(aka LGIA module)to capture the high-order relationship between nodes that are far apart.We incorporate both local and global correlations into hypergraph which is able to capture high-order rela-tionships between nodes via the concept of a hyperedge connecting a subset of nodes.The local correlation considers neighborhood nodes that are spatially adja-cent and similar in the same CNN feature maps of magnetic resonance(MR)image;and the global correlation is searched from a batch of CNN feature maps of MR images in feature space.The influence of these two correlations on seman-tic segmentation is complementary.We validated our LGIA module on various CNN segmentation models with the cardiac MR images dataset.Experimental results demonstrate that our approach outperformed several baseline models. 展开更多
关键词 Convolutional neural network semantic segmentation hypergraph neural network LGIA module
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部