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Recurrent Residual Convolutional Neural Network based on U-Net (R2U-Net) for Medical Image Segmentation.

TLDR
A Recurrent Convolutional Neural Network (RCNN) based on U-Net as well as a Recurrent Residual convolutional neural Network (RRCNN), which are named RU-Net and R2U-Net respectively are proposed, which show superior performance on segmentation tasks compared to equivalent models including U-nets and residual U- net.
Abstract
Deep learning (DL) based semantic segmentation methods have been providing state-of-the-art performance in the last few years. More specifically, these techniques have been successfully applied to medical image classification, segmentation, and detection tasks. One deep learning technique, U-Net, has become one of the most popular for these applications. In this paper, we propose a Recurrent Convolutional Neural Network (RCNN) based on U-Net as well as a Recurrent Residual Convolutional Neural Network (RRCNN) based on U-Net models, which are named RU-Net and R2U-Net respectively. The proposed models utilize the power of U-Net, Residual Network, as well as RCNN. There are several advantages of these proposed architectures for segmentation tasks. First, a residual unit helps when training deep architecture. Second, feature accumulation with recurrent residual convolutional layers ensures better feature representation for segmentation tasks. Third, it allows us to design better U-Net architecture with same number of network parameters with better performance for medical image segmentation. The proposed models are tested on three benchmark datasets such as blood vessel segmentation in retina images, skin cancer segmentation, and lung lesion segmentation. The experimental results show superior performance on segmentation tasks compared to equivalent models including U-Net and residual U-Net (ResU-Net).

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Citations
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Journal ArticleDOI

Mine yOur owN Anatomy: Revisiting Medical Image Segmentation with Extremely Limited Labels

TL;DR: A novel semi-supervised medical image segmentation framework termed MONA is introduced and a set of objectives are constructed that encourage the model to be capable of decomposing medical images into a collection of anatomical features in an unsupervised manner.
Journal ArticleDOI

Medical image segmentation based on active fusion-transduction of multi-stream features

TL;DR: A novel medical image segmentation framework, namely AFT-Net, is introduced, in which an attention-based data fusion model is proposed to effectively cooperate with the authors' multi-stream encoder, and an Inception Res-Atrous Convolution block is proposing to collect correlated contextual information in the decoding stage.
Book ChapterDOI

Medical Image Segmentation Using Deep Learning

TL;DR: This chapter aims at providing an introduction to deep learning-based medical image segmentation, where supervised and semi-supervised architectures are described, where encoder-decoder type networks are the most widely employed ones.
Journal ArticleDOI

Automated detection of left ventricle in arterial input function images for inline perfusion mapping using deep learning: A study of 15,000 patients.

TL;DR: This study presents a robust LV detection method using the convolutional neural network (CNN) to improve the detection of regional and global flow reduction in myocardial perfusion.
Book ChapterDOI

Residual Spatial Attention Network for Retinal Vessel Segmentation

TL;DR: The Residual Spatial Attention Network (RSAN) for retinal vessel segmentation employs a modified residual block structure that integrates DropBlock, which can not only be utilized to construct deep networks to extract more complex vascular features, but can also effectively alleviate the overfitting.
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