3260 papers • 126 benchmarks • 313 datasets
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A novel mutual consistency network (MC-Net+) is proposed to effectively exploit the unlabeled data for semi-supervised medical image segmentation to force the model to generate invariant results in such challenging regions, aiming at regularizing the model training.
This paper proposes MisMatch, a semi-supervised segmentation framework based on the consistency between paired predictions which are derived from two differently learnt morphological feature perturbations and develops a 2D U-net based MisMatch framework and performs extensive cross-validation on a CT-based pulmonary vessel segmentation task.
The proposed SS-Net is proposed for semi-supervised medical image segmentation tasks, via exploring the pixel-level smoothness and inter-class separation at the same time and achieving new state-of-the-art (SOTA) performance on both datasets.
An advanced consistency-aware pseudo-label-based self-ensembling approach is presented to fully utilize the power of Vision Transformer and Convolutional Neural Network in semi-supervised learning.
Although recent works in semi-supervised learning (SemiSL) have accomplished significant success in natural image segmentation, the task of learning discriminative representations from limited annotations has been an open problem in medical images. Contrastive Learning (CL) frameworks use the notion of similarity measure which is useful for classification problems, however, they fail to transfer these quality representations for accurate pixel-level segmentation. To this end, we propose a novel semi-supervised patch-based CL framework for medical image segmentation without using any explicit pretext task. We harness the power of both CL and SemiSL, where the pseudo-labels generated from SemiSL aid CL by providing additional guidance, whereas discriminative class information learned in CL leads to accurate multi-class segmentation. Additionally, we formulate a novel loss that synergistically encourages inter-class separability and intraclass compactness among the learned representations. A new inter-patch semantic disparity mapping using average patch entropy is employed for a guided sampling of positives and negatives in the proposed CL framework. Experimental analysis on three publicly available datasets of multiple modalities reveals the superiority of our proposed method as compared to the state-of-the-art methods. Code is available at: GitHub.
Experimental results on three public benchmarks show that the proposed ICL method can outperform the state-of-the-art, especially when the number of annotated data is extremely limited.
This work proposes an adaptive supervised contrastive loss, where it is argued that blindly adopting a constant temperature τ in the contrastive loss on long-tailed medical data is not optimal, and proposes to use a dynamic τ via a simple cosine schedule to yield better separation between majority and minority classes.
It is revealed that the simple mechanism of copy-pasting bidirectionally between labeled and unlabeled data is good enough and the experiments show solid gains compared with other state-of-the-arts on various semi-supervised medical image segmentation datasets.
This work proposes a generic semi-supervised learning framework for image segmentation based on a deep convolutional neural network (DCNN) and is able to significantly improve beyond fully supervised model learning by incorporating unlabeled data.
This work proposes a novel dual-task-consistency semi-supervised framework that can largely improve the performance by incorporating the unlabeled data and outperforms the state-of-the-art semi- supervised learning methods.
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