OpenCodePapers
medical-image-segmentation-on-monuseg
Medical Image Segmentation
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Paper
Code
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IoU
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ModelName
ReleaseDate
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Cell Detection with Star-convex Polygons
✓ Link
84.6
Stardist
2018-06-09
Rethinking the Nested U-Net Approach: Enhancing Biomarker Segmentation with Attention Mechanisms and Multiscale Feature Fusion
✓ Link
84.12
73.06
2.2422
0.1583
ReN-UNet
2025-04-08
Hi-gMISnet: generalized medical image segmentation using DWT based multilayer fusion and dual mode attention into high resolution pGAN
✓ Link
82.50
Hi-gMISnet
2024-05-20
LViT: Language meets Vision Transformer in Medical Image Segmentation
✓ Link
81.01
68.2
LViT-L
2022-06-29
Masked Diffusion as Self-supervised Representation Learner
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81.01
MDM
2023-08-10
LViT: Language meets Vision Transformer in Medical Image Segmentation
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80.66
67.71
LViT-LW
2022-06-29
LViT: Language meets Vision Transformer in Medical Image Segmentation
✓ Link
79.87
66.68
UCTransNet
2022-06-29
Medical Transformer: Gated Axial-Attention for Medical Image Segmentation
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79.56
66.17
LoGo
2021-02-21
Medical Transformer: Gated Axial-Attention for Medical Image Segmentation
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79.55
66.17
MedT
2021-02-21
LViT: Language meets Vision Transformer in Medical Image Segmentation
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79.26
65.94
GTUNet
2022-06-29
LViT: Language meets Vision Transformer in Medical Image Segmentation
✓ Link
77.01
63.04
UNet++
2022-06-29
Medical Transformer: Gated Axial-Attention for Medical Image Segmentation
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76.83
62.49
U-Net
2021-02-21
HistoSeg : Quick attention with multi-loss function for multi-structure segmentation in digital histology images
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71.06
HistoSeg
2022-09-01
Dual Cross-Attention for Medical Image Segmentation
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65.97
DoubleUnet-DCA
2023-03-30
Rethinking Decoder Design: Improving Biomarker Segmentation Using Depth-to-Space Restoration and Residual Linear Attention
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74.04
MCADS-Decoder
2025-06-23