Two Independent Teachers are Better Role Model (2306.05745v2)
Abstract: Recent deep learning models have attracted substantial attention in infant brain analysis. These models have performed state-of-the-art performance, such as semi-supervised techniques (e.g., Temporal Ensembling, mean teacher). However, these models depend on an encoder-decoder structure with stacked local operators to gather long-range information, and the local operators limit the efficiency and effectiveness. Besides, the $MRI$ data contain different tissue properties ($TPs$) such as $T1$ and $T2$. One major limitation of these models is that they use both data as inputs to the segment process, i.e., the models are trained on the dataset once, and it requires much computational and memory requirements during inference. In this work, we address the above limitations by designing a new deep-learning model, called 3D-DenseUNet, which works as adaptable global aggregation blocks in down-sampling to solve the issue of spatial information loss. The self-attention module connects the down-sampling blocks to up-sampling blocks, and integrates the feature maps in three dimensions of spatial and channel, effectively improving the representation potential and discriminating ability of the model. Additionally, we propose a new method called Two Independent Teachers ($2IT$), that summarizes the model weights instead of label predictions. Each teacher model is trained on different types of brain data, $T1$ and $T2$, respectively. Then, a fuse model is added to improve test accuracy and enable training with fewer parameters and labels compared to the Temporal Ensembling method without modifying the network architecture. Empirical results demonstrate the effectiveness of the proposed method. The code is available at https://github.com/AfifaKhaled/Two-Independent-Teachers-are-Better-Role-Model.
- Shape-aware semi-supervised 3D semantic segmentation for medical images. In Medical Image Computing and Computer Assisted Intervention–MICCAI 2020: 23rd International Conference, Lima, Peru, October 4–8, 2020, Proceedings, Part I 23, pages 552–561, 2020.
- "improved brain segmentation using pixel separation and additional segmentation features". In Xin "Wang, Rui Zhang, Young-Koo Lee, Le Sun, and Yang-Sae" Moon, editors, "Web and Big Data", pages "85–100", "2020".
- Multi-model medical image segmentation using multi-stage generative adversarial networks. IEEE Access, 10:28590–28599, 2022.
- Taher A. Ghaleb Afifa Khaled, Jian-Jun Han. Learning to detect boundary information for brain image segmentation. BMC Bioinformatics, 23(1):1–15, 2022.
- Cascaded dilated dense network with two-step data consistency for MRI reconstruction. Advances in Neural Information Processing Systems, 32, 2019.
- Multi-angle dual-task consistency for semi-supervised medical image segmentation. In The 9th International Conference on Information Technology: IoT and Smart City, pages 61–66, 2021.
- Mean teachers are better role models: Weight-averaged consistency targets improve semi-supervised deep learning results, 2018.
- Taher A Ghaleb Afifa Khaled, Jian-Jun Han and Radman Mohamed. Learning to detect boundary information for brain image segmentation. Arabian Journal for Science and Engineering, 48:2133–2146, 2023.
- Benchmark on automatic six-month-old infant brain segmentation algorithms: the iseg-2017 challenge. IEEE Transactions on Medical Imaging, 38(9):2219–2230, 2019.
- Deep CNN ensembles and suggestive annotations for infant brain MRI segmentation. Computerized Medical Imaging and Graphics, 79:101660, 2020.
- Brain tumour segmentation based on an improved u-net. BMC Medical Imaging, 22(1):1–9, 2022.
- Deep adversarial networks for biomedical image segmentation utilizing unannotated images. In Medical Image Computing and Computer Assisted Intervention- MICCAI 2017: 20th International Conference, Quebec City, QC, Canada, September 11-13, 2017, Proceedings, Part III 20, pages 408–416, 2017.
- Semi-supervised medical image segmentation via learning consistency under transformations. In Medical Image Computing and Computer Assisted Intervention–MICCAI 2019: 22nd International Conference, Shenzhen, China, October 13–17, 2019, Proceedings, Part VI 22, pages 810–818, 2019.
- Multi-task curriculum learning for semi-supervised medical image segmentation. In IEEE 18th International Symposium on Biomedical Imaging (ISBI), pages 925–928, 2021.
- Temporal ensembling for semi-supervised learning. arXiv preprint arXiv:1610.02242, 2016.
- Semi-supervised medical image segmentation via a tripled-uncertainty guided mean teacher model with contrastive learning. Medical Image Analysis, 79:102447, 2022.
- Semi-supervised brain lesion segmentation with an adapted mean teacher model. In Information Processing in Medical Imaging: 26th International Conference, IPMI 2019, Hong Kong, China, June 2–7, 2019, Proceedings 26, pages 554–565, 2019.
- U-Net: Convolutional networks for biomedical image segmentation. In Medical Image Computing and Computer-Assisted Intervention – MICCAI 2015, pages 234–241, 2015.
- Attention is all you need. Advances in Neural Information Processing Systems, 30, 2017.
- Semi-supervised learning with ladder networks. Advances in Neural Information Processing Systems, 28, 2015.
- Virtual adversarial training: A regularization method for supervised and semi-supervised learning, 2018.
- Delving deep into rectifiers: Surpassing human-level performance on ImageNet classification, 2015.
- Semi-supervised 3D abdominal multi-organ segmentation via deep multi-planar co-training. In 2019 IEEE Winter Conference on Applications of Computer Vision (WACV), pages 121–140, 2019.
- Non-local U-nets for biomedical image segmentation. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 34, pages 6315–6322, 2020.
- DAM-AL. In Proceedings of the 37th ACM/SIGAPP Symposium on Applied Computing, April 2022.
- A variant form of 3D-UNet for infant brain segmentation. Future Generation Computer Systems, 108:613–623, 2020.
- Örjan Smedby Amirreza Mahbod, Manish Chowdhury and Chunliang Wang. Automatic brain segmentation using artificial neural networks with shape context. Pattern Recognition Letters, 101:74–79, 2018.
- HyperDense-Net: A hyper-densely connected CNN for multi-modal image segmentation. IEEE Transactions on Medical Imaging, 38:1116–1126, 2018.