Self-supervised Semantic Segmentation: Consistency over Transformation
- URL: http://arxiv.org/abs/2309.00143v1
- Date: Thu, 31 Aug 2023 21:28:46 GMT
- Title: Self-supervised Semantic Segmentation: Consistency over Transformation
- Authors: Sanaz Karimijafarbigloo, Reza Azad, Amirhossein Kazerouni, Yury
Velichko, Ulas Bagci, Dorit Merhof
- Abstract summary: We propose a novel self-supervised algorithm, textbfS$3$-Net, which integrates a robust framework based on the proposed Inception Large Kernel Attention (I-LKA) modules.
We leverage deformable convolution as an integral component to effectively capture and delineate lesion deformations for superior object boundary definition.
Our experimental results on skin lesion and lung organ segmentation tasks show the superior performance of our method compared to the SOTA approaches.
- Score: 3.485615723221064
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate medical image segmentation is of utmost importance for enabling
automated clinical decision procedures. However, prevailing supervised deep
learning approaches for medical image segmentation encounter significant
challenges due to their heavy dependence on extensive labeled training data. To
tackle this issue, we propose a novel self-supervised algorithm,
\textbf{S$^3$-Net}, which integrates a robust framework based on the proposed
Inception Large Kernel Attention (I-LKA) modules. This architectural
enhancement makes it possible to comprehensively capture contextual information
while preserving local intricacies, thereby enabling precise semantic
segmentation. Furthermore, considering that lesions in medical images often
exhibit deformations, we leverage deformable convolution as an integral
component to effectively capture and delineate lesion deformations for superior
object boundary definition. Additionally, our self-supervised strategy
emphasizes the acquisition of invariance to affine transformations, which is
commonly encountered in medical scenarios. This emphasis on robustness with
respect to geometric distortions significantly enhances the model's ability to
accurately model and handle such distortions. To enforce spatial consistency
and promote the grouping of spatially connected image pixels with similar
feature representations, we introduce a spatial consistency loss term. This
aids the network in effectively capturing the relationships among neighboring
pixels and enhancing the overall segmentation quality. The S$^3$-Net approach
iteratively learns pixel-level feature representations for image content
clustering in an end-to-end manner. Our experimental results on skin lesion and
lung organ segmentation tasks show the superior performance of our method
compared to the SOTA approaches. https://github.com/mindflow-institue/SSCT
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