Joint Optimization of Class-Specific Training- and Test-Time Data
Augmentation in Segmentation
- URL: http://arxiv.org/abs/2305.19084v1
- Date: Tue, 30 May 2023 14:48:45 GMT
- Title: Joint Optimization of Class-Specific Training- and Test-Time Data
Augmentation in Segmentation
- Authors: Zeju Li, Konstantinos Kamnitsas, Qi Dou, Chen Qin and Ben Glocker
- Abstract summary: This paper presents an effective and general data augmentation framework for medical image segmentation.
We adopt a computationally efficient and data-efficient gradient-based meta-learning scheme to align the distribution of training and validation data.
We demonstrate the effectiveness of our method on four medical image segmentation tasks with two state-of-the-art segmentation models, DeepMedic and nnU-Net.
- Score: 35.41274775082237
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents an effective and general data augmentation framework for
medical image segmentation. We adopt a computationally efficient and
data-efficient gradient-based meta-learning scheme to explicitly align the
distribution of training and validation data which is used as a proxy for
unseen test data. We improve the current data augmentation strategies with two
core designs. First, we learn class-specific training-time data augmentation
(TRA) effectively increasing the heterogeneity within the training subsets and
tackling the class imbalance common in segmentation. Second, we jointly
optimize TRA and test-time data augmentation (TEA), which are closely connected
as both aim to align the training and test data distribution but were so far
considered separately in previous works. We demonstrate the effectiveness of
our method on four medical image segmentation tasks across different scenarios
with two state-of-the-art segmentation models, DeepMedic and nnU-Net. Extensive
experimentation shows that the proposed data augmentation framework can
significantly and consistently improve the segmentation performance when
compared to existing solutions. Code is publicly available.
Related papers
- Data Augmentation for Traffic Classification [54.92823760790628]
Data Augmentation (DA) is a technique widely adopted in Computer Vision (CV) and Natural Language Processing (NLP) tasks.
DA has struggled to gain traction in networking contexts, particularly in Traffic Classification (TC) tasks.
arXiv Detail & Related papers (2024-01-19T15:25:09Z) - Pseudo Label-Guided Data Fusion and Output Consistency for
Semi-Supervised Medical Image Segmentation [9.93871075239635]
We propose the PLGDF framework, which builds upon the mean teacher network for segmenting medical images with less annotation.
We propose a novel pseudo-label utilization scheme, which combines labeled and unlabeled data to augment the dataset effectively.
Our framework yields superior performance compared to six state-of-the-art semi-supervised learning methods.
arXiv Detail & Related papers (2023-11-17T06:36:43Z) - Improved Distribution Matching for Dataset Condensation [91.55972945798531]
We propose a novel dataset condensation method based on distribution matching.
Our simple yet effective method outperforms most previous optimization-oriented methods with much fewer computational resources.
arXiv Detail & Related papers (2023-07-19T04:07:33Z) - RAIS: Robust and Accurate Interactive Segmentation via Continual
Learning [16.382862088005087]
We propose RAIS, a robust and accurate architecture for interactive segmentation with continuous learning.
For efficient learning on the test set, we propose a novel optimization strategy to update global and local parameters.
Our method also shows its robustness in the datasets of remote sensing and medical imaging.
arXiv Detail & Related papers (2022-10-20T03:05:44Z) - Incremental Learning Meets Transfer Learning: Application to Multi-site
Prostate MRI Segmentation [16.50535949349874]
We propose a novel multi-site segmentation framework called incremental-transfer learning (ITL)
ITL learns a model from multi-site datasets in an end-to-end sequential fashion.
We show for the first time that leveraging our ITL training scheme is able to alleviate challenging catastrophic problems in incremental learning.
arXiv Detail & Related papers (2022-06-03T02:32:01Z) - An Empirical Study on Distribution Shift Robustness From the Perspective
of Pre-Training and Data Augmentation [91.62129090006745]
This paper studies the distribution shift problem from the perspective of pre-training and data augmentation.
We provide the first comprehensive empirical study focusing on pre-training and data augmentation.
arXiv Detail & Related papers (2022-05-25T13:04:53Z) - DANCE: DAta-Network Co-optimization for Efficient Segmentation Model
Training and Inference [85.02494022662505]
DANCE is an automated simultaneous data-network co-optimization for efficient segmentation model training and inference.
It integrates automated data slimming which adaptively downsamples/drops input images and controls their corresponding contribution to the training loss guided by the images' spatial complexity.
Experiments and ablating studies demonstrate that DANCE can achieve "all-win" towards efficient segmentation.
arXiv Detail & Related papers (2021-07-16T04:58:58Z) - Dual-Teacher: Integrating Intra-domain and Inter-domain Teachers for
Annotation-efficient Cardiac Segmentation [65.81546955181781]
We propose a novel semi-supervised domain adaptation approach, namely Dual-Teacher.
The student model learns the knowledge of unlabeled target data and labeled source data by two teacher models.
We demonstrate that our approach is able to concurrently utilize unlabeled data and cross-modality data with superior performance.
arXiv Detail & Related papers (2020-07-13T10:00:44Z) - Automatic Data Augmentation via Deep Reinforcement Learning for
Effective Kidney Tumor Segmentation [57.78765460295249]
We develop a novel automatic learning-based data augmentation method for medical image segmentation.
In our method, we innovatively combine the data augmentation module and the subsequent segmentation module in an end-to-end training manner with a consistent loss.
We extensively evaluated our method on CT kidney tumor segmentation which validated the promising results of our method.
arXiv Detail & Related papers (2020-02-22T14:10:13Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.