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<div class="csl-entry">Yuan, D., Xu, Z., Tian, B., Wang, H., Zhan, Y., & Lukasiewicz, T. (2023). μ-Net: Medical image segmentation using efficient and effective deep supervision. <i>Computers in Biology and Medicine</i>, <i>160</i>, Article 106963. https://doi.org/10.1016/j.compbiomed.2023.106963</div>
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dc.identifier.issn
0010-4825
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/191466
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dc.description.abstract
Although the existing deep supervised solutions have achieved some great successes in medical image segmentation, they have the following shortcomings; (i) semantic difference problem: since they are obtained by very different convolution or deconvolution processes, the intermediate masks and predictions in deep supervised baselines usually contain semantics with different depth, which thus hinders the models' learning capabilities; (ii) low learning efficiency problem: additional supervision signals will inevitably make the training of the models more time-consuming. Therefore, in this work, we first propose two deep supervised learning strategies, U-Net-Deep and U-Net-Auto, to overcome the semantic difference problem. Then, to resolve the low learning efficiency problem, upon the above two strategies, we further propose a new deep supervised segmentation model, called μ-Net, to achieve not only effective but also efficient deep supervised medical image segmentation by introducing a tied-weight decoder to generate pseudo-labels with more diverse information and also speed up the convergence in training. Finally, three different types of μ-Net-based deep supervision strategies are explored and a Similarity Principle of Deep Supervision is further derived to guide future research in deep supervised learning. Experimental studies on four public benchmark datasets show that μ-Net greatly outperforms all the state-of-the-art baselines, including the state-of-the-art deeply supervised segmentation models, in terms of both effectiveness and efficiency. Ablation studies sufficiently prove the soundness of the proposed Similarity Principle of Deep Supervision, the necessity and effectiveness of the tied-weight decoder, and using both the segmentation and reconstruction pseudo-labels for deep supervised learning.
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dc.language.iso
en
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dc.publisher
PERGAMON-ELSEVIER SCIENCE LTD
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dc.relation.ispartof
Computers in Biology and Medicine
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dc.subject
Semantics
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dc.subject
Sound
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dc.subject
Image Processing, Computer-Assisted
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dc.subject
Deep supervised learning
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dc.subject
Medical image segmentation
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dc.subject
Similarity principle of deep supervision
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dc.subject
Tied-weight decoder
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dc.subject
Benchmarking
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dc.subject
Diffusion Magnetic Resonance Imaging
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dc.title
μ-Net: Medical image segmentation using efficient and effective deep supervision