Pyramid pooling enhanced ResUNet for accurate 3D brain image segmentation
Date
2023-09Publisher
Brac UniversityAuthor
Mollah, Md. ShawonAhmed, Farhan Tanvir
Chowdhury, Mahjabin
Ahmed, Iftekhar
Hasan, S. M. Rakib
Metadata
Show full item recordAbstract
"Medical picture segmentation is important for clinical applications because it can
offer valuable information on disease identification. With the inclusion of deep
learning techniques, the original U-Net and ResUnet architecture has demonstrated
excellent performance in 2D medical picture segmentation issues. However, it is still
challenging to extend the U-Net to handle 3D volumetric medical images. This thesis
proposed a redesigned ResUnet architecture with a hybrid model called pyramid
pooling with enhanced ResUNet fusion with ResUnet and dialated spatial pyramid
pooling from DeepLabV3+. Therefore, CNNs will effectively aid us in addressing
the 3D segmentation problem.
Accurate segmentation of 3D brain pictures is critical in neuroimaging research because
it allows for exact anatomical localization and quantitative analysis. In this paper,
we introduce a novel framework for robust and high-fidelity 3D brain image segmentation
that combines the capability of Dilated Spatial Pyramid Pooling (DSPP)
with the Residual U-Net (ResUNet) architecture. The ResUNet’s DSPP module
improves multi-scale feature representation by aggregating information across several
spatial resolutions, allowing the network which represent feature context. This
integration tackles the issues given by complicated brain architecture as well as the
unpredictability in picture quality that is frequent in real-world datasets in a synergistic
manner. The model can comprehend complex patterns and recognize minute
details in medical images thanks to attention processes, residual connections, and
feature fusion methods. Brain tumors are divided in the research into medical images
where the clinical data or benchmark datasets will be used to assess the proposed
model. In order to assess segmentation accuracy and contrast it with cutting-edge
techniques, The Dice similarity coefficient metrics will be used.
This paper will create a novel and efficient 3D image segmentation framework using
a modified ResUNet architecture and enhanced pyramid pooling from DeeplabV3+."