Dynamic Linear Transformer for 3D Biomedical Image Segmentation
- URL: http://arxiv.org/abs/2206.00771v1
- Date: Wed, 1 Jun 2022 21:15:01 GMT
- Title: Dynamic Linear Transformer for 3D Biomedical Image Segmentation
- Authors: Zheyuan Zhang, Ulas Bagci
- Abstract summary: Transformer-based neural networks have surpassed promising performance on many biomedical image segmentation tasks.
Main challenge for 3D transformer-based segmentation methods is the quadratic complexity introduced by the self-attention mechanism.
We propose a novel transformer architecture for 3D medical image segmentation using an encoder-decoder style architecture with linear complexity.
- Score: 2.440109381823186
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Transformer-based neural networks have surpassed promising performance on
many biomedical image segmentation tasks due to a better global information
modeling from the self-attention mechanism. However, most methods are still
designed for 2D medical images while ignoring the essential 3D volume
information. The main challenge for 3D transformer-based segmentation methods
is the quadratic complexity introduced by the self-attention mechanism
\cite{vaswani2017attention}. In this paper, we propose a novel transformer
architecture for 3D medical image segmentation using an encoder-decoder style
architecture with linear complexity. Furthermore, we newly introduce a dynamic
token concept to further reduce the token numbers for self-attention
calculation. Taking advantage of the global information modeling, we provide
uncertainty maps from different hierarchy stages. We evaluate this method on
multiple challenging CT pancreas segmentation datasets. Our promising results
show that our novel 3D Transformer-based segmentor could provide promising
highly feasible segmentation performance and accurate uncertainty
quantification using single annotation. Code is available
https://github.com/freshman97/LinTransUNet.
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