TL;DR
M$^{2}$SNet is a novel multi-scale subtraction network designed for precise medical image segmentation, effectively capturing detailed and structural features across diverse imaging modalities.
Contribution
The paper introduces a multi-scale in multi-scale subtraction approach with a training-free LossNet for improved feature differentiation in medical image segmentation.
Findings
Outperforms state-of-the-art methods on eleven datasets across four modalities.
Effectively captures both pixel-level and structure-level difference information.
Demonstrates versatility across diverse medical imaging tasks.
Abstract
Accurate medical image segmentation is critical for early medical diagnosis. Most existing methods are based on U-shape structure and use element-wise addition or concatenation to fuse different level features progressively in decoder. However, both the two operations easily generate plenty of redundant information, which will weaken the complementarity between different level features, resulting in inaccurate localization and blurred edges of lesions. To address this challenge, we propose a general multi-scale in multi-scale subtraction network (MSNet) to finish diverse segmentation from medical image. Specifically, we first design a basic subtraction unit (SU) to produce the difference features between adjacent levels in encoder. Next, we expand the single-scale SU to the intra-layer multi-scale SU, which can provide the decoder with both pixel-level and structure-level…
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