Annotation-Efficient Polyp Segmentation via Active Learning (2403.14350v1)
Abstract: Deep learning-based techniques have proven effective in polyp segmentation tasks when provided with sufficient pixel-wise labeled data. However, the high cost of manual annotation has created a bottleneck for model generalization. To minimize annotation costs, we propose a deep active learning framework for annotation-efficient polyp segmentation. In practice, we measure the uncertainty of each sample by examining the similarity between features masked by the prediction map of the polyp and the background area. Since the segmentation model tends to perform weak in samples with indistinguishable features of foreground and background areas, uncertainty sampling facilitates the fitting of under-learning data. Furthermore, clustering image-level features weighted by uncertainty identify samples that are both uncertain and representative. To enhance the selectivity of the active selection strategy, we propose a novel unsupervised feature discrepancy learning mechanism. The selection strategy and feature optimization work in tandem to achieve optimal performance with a limited annotation budget. Extensive experimental results have demonstrated that our proposed method achieved state-of-the-art performance compared to other competitors on both a public dataset and a large-scale in-house dataset.
- “Colorectal cancer statistics, 2020,” CA: a cancer journal for clinicians, vol. 70, no. 3, pp. 145–164, 2020.
- “Lesion-aware dynamic kernel for polyp segmentation,” in MICCAI. Springer, 2022, pp. 99–109.
- “Adaptive context selection for polyp segmentation,” in MICCAI. Springer, 2020, pp. 253–262.
- “Unveiling camouflaged and partially occluded colorectal polyps: Introducing cpsnet for accurate colon polyp segmentation,” CBM, p. 108186, 2024.
- “Unpaired image-to-image translation based domain adaptation for polyp segmentation,” in ISBI. IEEE, 2023, pp. 1–5.
- “Planeseg: Building a plug-in for boosting planar region segmentation,” IEEE Transactions on Neural Networks and Learning Systems, vol. 1, no. 1, pp. 1–15, 2024.
- “Deep residual learning for image recognition,” 2016.
- “Mart: Masked affective representation learning via masked temporal distribution distillation,” in Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), 2024.
- “Hybridvps: Hybrid-supervised video polyp segmentation under low-cost labels,” IEEE SPL, 2023.
- “Semi-supervised spatial temporal attention network for video polyp segmentation,” in MICCAI. Springer, 2022, pp. 456–466.
- “Extdm: Distribution extrapolation diffusion model for video prediction,” in Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), 2024.
- “Suggestive annotation: A deep active learning framework for biomedical image segmentation,” in MICCAI. Springer, 2017, pp. 399–407.
- “Annotation-efficient cell counting,” in MICCAI. Springer, 2021, pp. 405–414.
- “Attention, suggestion and annotation: a deep active learning framework for biomedical image segmentation,” in MICCAI. Springer, 2020, pp. 3–13.
- “Divide and adapt: Active domain adaptation via customized learning,” in CVPR, 2023, pp. 7651–7660.
- “Concealed object detection,” TPAMI, vol. 44, no. 10, pp. 6024–6042, 2021.
- “Deep batch active learning by diverse, uncertain gradient lower bounds,” in ICLR, 2019.
- “Active learning by feature mixing,” in CVPR, 2022, pp. 12237–12246.
- “Unsupervised representation learning by predicting image rotations,” in ICLR, 2018.
- “Pranet: Parallel reverse attention network for polyp segmentation,” in MICCAI. Springer, 2020, pp. 263–273.
- “Wm-dova maps for accurate polyp highlighting in colonoscopy: Validation vs. saliency maps from physicians,” CMIG, vol. 43, pp. 99–111, 2015.
- “U-net: Convolutional networks for biomedical image segmentation,” in MICCAI. Springer, 2015, pp. 234–241.
- “Active learning for convolutional neural networks: A core-set approach,” in ICLR, 2018.