Densely Connected Recurrent Residual (Dense R2UNet) Convolutional Neural Network for Segmentation of Lung CT Images

02/01/2021
by   Kaushik Dutta, et al.
0

Deep Learning networks have established themselves as providing state of art performance for semantic segmentation. These techniques are widely applied specifically to medical detection, segmentation and classification. The advent of the U-Net based architecture has become particularly popular for this application. In this paper we present the Dense Recurrent Residual Convolutional Neural Network(Dense R2U CNN) which is a synthesis of Recurrent CNN, Residual Network and Dense Convolutional Network based on the U-Net model architecture. The residual unit helps training deeper network, while the dense recurrent layers enhances feature propagation needed for segmentation. The proposed model tested on the benchmark Lung Lesion dataset showed better performance on segmentation tasks than its equivalent models.

READ FULL TEXT
research
02/20/2018

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

Deep learning (DL) based semantic segmentation methods have been providi...
research
05/05/2021

R2U3D: Recurrent Residual 3D U-Net for Lung Segmentation

3D lung segmentation is essential since it processes the volumetric info...
research
06/25/2020

Deep Residual 3D U-Net for Joint Segmentation and Texture Classification of Nodules in Lung

In this work we present a method for lung nodules segmentation, their te...
research
11/23/2020

Scaling Wide Residual Networks for Panoptic Segmentation

The Wide Residual Networks (Wide-ResNets), a shallow but wide model vari...
research
04/05/2018

A Pyramid CNN for Dense-Leaves Segmentation

Automatic detection and segmentation of overlapping leaves in dense foli...
research
10/18/2018

S-Net: A Scalable Convolutional Neural Network for JPEG Compression Artifact Reduction

Recent studies have used deep residual convolutional neural networks (CN...

Please sign up or login with your details

Forgot password? Click here to reset