Bin Liu
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SDResU-Net: Separable and Dilated Residual U-Net for MRI Brain Tumor Segmentation
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Indexed by:Journal Papers

Date of Publication:2020-01-01

Journal:CURRENT MEDICAL IMAGING

Included Journals:SCIE

Volume:16

Issue:6

Page Number:720-728

ISSN No.:1573-4056

Key Words:Brain tumor; image segmentation; separable convolution; dilated convolution; residual U-Net; fully convolutional network

Abstract:Background: Glioma is one of the most common and aggressive primary brain tumors that endanger human health. Tumors segmentation is a key step in assisting the diagnosis and treatment of cancer disease. However, it is a relatively challenging task to precisely segment tumors considering characteristics of brain tumors and the device noise. Recently, with the breakthrough development of deep learning, brain tumor segmentation methods based on fully convolutional neural network (FCN) have illuminated brilliant performance and attracted more and more attention.
   Methods: In this work, we propose a novel FCN based network called SDResU-Net for brain tumor segmentation, which simultaneously embeds dilated convolution and separable convolution into residual U-Net architecture. SDResU-Net introduces dilated block into a residual U-Net architecture, which largely expends the receptive field and gains better local and global feature descriptions capacity. Meanwhile, to fully utilize the channel and region information of MRI brain images, we separate the internal and inter-slice structures of the improved residual U-Net by employing separable convolution operator. The proposed SDResU-Net captures more pixel-level details and spatial information, which provides a considerable alternative for the automatic and accurate segmentation of brain tumors.
   Results and Conclusion: The proposed SDResU-Net is extensively evaluated on two public MRI brain image datasets, i.e., BraTS 2017 and BraTS 2018. Compared with its counterparts and state-of-the-arts, SDResU-Net gains superior performance on both datasets, showing its effectiveness. In addition, cross-validation results on two datasets illuminate its satisfying generalization ability.

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Gender:Male

Alma Mater:大连理工大学

Degree:Doctoral Degree

School/Department:软件学院、国际信息与软件学院

Discipline:Software Engineering. Computer Applied Technology

Business Address:大连市经济技术开发区图强街321号大连理工大学开发区校区信息楼

Contact Information:laohubinbin@163.com

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