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Methods/UNETR

UNETR

UNet Transformer

Computer VisionIntroduced 200049 papers
Source Paper

Description

UNETR, or UNet Transformer, is a Transformer-based architecture for medical image segmentation that utilizes a pure transformer as the encoder to learn sequence representations of the input volume -- effectively capturing the global multi-scale information. The transformer encoder is directly connected to a decoder via skip connections at different resolutions like a U-Net to compute the final semantic segmentation output.

Papers Using This Method

Physics-Guided Radiotherapy Treatment Planning with Deep Learning2025-06-23Improving Prostate Gland Segmenting Using Transformer based Architectures2025-06-16Efficient Parameter Adaptation for Multi-Modal Medical Image Segmentation and Prognosis2025-04-18Uncertainty-Guided Coarse-to-Fine Tumor Segmentation with Anatomy-Aware Post-Processing2025-04-16Multi-encoder nnU-Net outperforms Transformer models with self-supervised pretraining2025-04-04Cross-Attention Fusion of MRI and Jacobian Maps for Alzheimer's Disease Diagnosis2025-03-01Cancer-Net PCa-Seg: Benchmarking Deep Learning Models for Prostate Cancer Segmentation Using Synthetic Correlated Diffusion Imaging2025-01-15UNetVL: Enhancing 3D Medical Image Segmentation with Chebyshev KAN Powered Vision-LSTM2025-01-13A fuzzy rank-based ensemble of CNN models for MRI segmentation2024-12-28RADARSAT Constellation Mission Compact Polarisation SAR Data for Burned Area Mapping with Deep Learning2024-12-16Enhancing Crop Segmentation in Satellite Image Time Series with Transformer Networks2024-12-02SASWISE-UE: Segmentation and Synthesis with Interpretable Scalable Ensembles for Uncertainty Estimation2024-11-08Multi-temporal crack segmentation in concrete structure using deep learning approaches2024-11-07Optimizing Medical Image Segmentation with Advanced Decoder Design2024-10-05Going Beyond U-Net: Assessing Vision Transformers for Semantic Segmentation in Microscopy Image Analysis2024-09-25Model Ensemble for Brain Tumor Segmentation in Magnetic Resonance Imaging2024-09-12MOSMOS: Multi-organ segmentation facilitated by medical report supervision2024-09-04Dimensionality Reduction and Nearest Neighbors for Improving Out-of-Distribution Detection in Medical Image Segmentation2024-08-05SegStitch: Multidimensional Transformer for Robust and Efficient Medical Imaging Segmentation2024-08-01UKAN-EP: Enhancing U-KAN with Efficient Attention and Pyramid Aggregation for 3D Multi-Modal MRI Brain Tumor Segmentation2024-08-01