A Multi-View Dynamic Fusion Framework: How to Improve the Multimodal Brain Tumor Segmentation from Multi-Views?
Yi Ding, Wei Zheng, Guozheng Wu, Ji Geng, Mingsheng Cao, Zhiguang Qin

TL;DR
This paper introduces a multi-view dynamic fusion framework that leverages multi-view deep neural networks and fusion strategies to enhance brain tumor segmentation accuracy from multimodal 3D images.
Contribution
It proposes a novel multi-view deep neural network architecture with a dynamic fusion method and a specialized multi-view fusion loss to improve segmentation performance.
Findings
Fusion results outperform single-view segmentation.
The multi-view fusion loss improves training stability.
The framework achieves higher accuracy and efficiency.
Abstract
When diagnosing the brain tumor, doctors usually make a diagnosis by observing multimodal brain images from the axial view, the coronal view and the sagittal view, respectively. And then they make a comprehensive decision to confirm the brain tumor based on the information obtained from multi-views. Inspired by this diagnosing process and in order to further utilize the 3D information hidden in the dataset, this paper proposes a multi-view dynamic fusion framework to improve the performance of brain tumor segmentation. The proposed framework consists of 1) a multi-view deep neural network architecture, which represents multi learning networks for segmenting the brain tumor from different views and each deep neural network corresponds to multi-modal brain images from one single view and 2) the dynamic decision fusion method, which is mainly used to fuse segmentation results from…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Advanced Image Fusion Techniques · Advanced Neural Network Applications
MethodsAxial Attention
