Author:
Xie Mingjian,Geng Yiqun,Zhang Weifeng,Li Shan,Dong Yuejiao,Wu Yongjun,Tang Hongzhong,Hong Liangli
Reference51 articles.
1. DAN-NucNet: A dual attention based framework for nuclei segmentation in cancer histology images under wild clinical conditions;Ahmad;Expert Systems with Applications,2023
2. Basak, H., & Yin, Z. (2023). Pseudo-label guided contrastive learning for semi-supervised medical image segmentation. In Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, pp. 19786–19797.
3. Consistency regularization in varying contexts and feature perturbations for semi-supervised semantic segmentation of histology images;Bashir;Medical Image Analysis,2024
4. Beluch,W. H., Genewein, T., Nurnberger, A., & Kohler, J. M. (2018). The power of ensembles for active learning in image classification. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 9368–9377.
5. Berthelot, D., Carlini, N., Goodfellow, I., Papernot, N., Oliver, A., & Raffel, C. A. (2019). Mixmatch: a holistic approach to semi-supervised learning. In International Conference on Neural Information Processing Systems, pp. 5049–5059.