Weakly-supervised learning (WSL) has been proposed to alleviate the conflict between data annotation cost and model performance through employing sparsely-grained (i.e., point-, box-, scribble-wise) supervision and has shown promising performance, particularly in the image segmentation field. However, it is still a very challenging task due to the limited supervision, especially when only a small number of labeled samples are available. Additionally, almost all existing WSL segmentation methods are designed for star-convex structures which are very different from curvilinear structures such as vessels and nerves. In this paper, we propose a novel sparsely annotated segmentation framework for curvilinear structures, named YoloCurvSeg. A very essential component of YoloCurvSeg is image synthesis. Specifically, a background generator delivers image backgrounds that closely match the real distributions through inpainting dilated skeletons. The extracted backgrounds are then combined with randomly emulated curves generated by a Space Colonization Algorithm-based foreground generator and through a multilayer patch-wise contrastive learning synthesizer. In this way, a synthetic dataset with both images and curve segmentation labels is obtained, at the cost of only one or a few noisy skeleton annotations. Finally, a segmenter is trained with the generated dataset and possibly an unlabeled dataset. The proposed YoloCurvSeg is evaluated on four publicly available datasets (OCTA500, CORN, DRIVE and CHASEDB1) and the results show that YoloCurvSeg outperforms state-of-the-art WSL segmentation methods by large margins. With only one noisy skeleton annotation (respectively 0.14%, 0.03%, 1.40%, and 0.65% of the full annotation), YoloCurvSeg achieves more than 97% of the fully-supervised performance on each dataset. Code and datasets will be released at https://github.com/llmir/YoloCurvSeg.
翻译:微弱监督的学习 (WS40CL) 已被提出, 目的是通过使用稀疏的( 即, 点、 框、 滑鼠) 监督来缓解数据笔记成本和模型性能之间的冲突, 并展示了有希望的性能, 特别是在图像分割字段中。 然而, 由于监管范围有限, 尤其是在只有少量标签样本存在的情况下, 这仍然是一个非常具有挑战性的任务。 此外, 几乎所有现有的 WSL 分割法都设计了与船只和神经等曲线结构非常不同的恒星- 等结构。 在本文件中, 我们提出了一个新颖的有说明性的曲线结构( 即, 点, 框- 框- 框- 框- 框- 框- ) 的分解框架, 并展示了有说明的卷轴- 方向- 数据流数据流数据流数据流的快速化 。 具体来说, 背景的生成者提供与真实的分布相近, 提取的背景背景与随机复制的曲线- 以空心化的 Algorimel- deal- deal- deal del 数据流数据流数据流数据流数据流数据流数据流流化为唯一一个完整。