Adaptive-Masking Policy with Deep Reinforcement Learning for Self-Supervised Medical Image Segmentation

Gang Xu, Shengxin Wang, Thomas Lukasiewicz, Zhenghua Xu
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Abstract

Although self-supervised learning methods based on masked image modeling have achieved some success in improving the performance of deep learning models, these methods have difficulty in ensuring that the masked region is the most appropriate for each image, resulting in segmentation networks that do not get the best weights in pre-training. Therefore, we propose a new adaptive-masking policy self-supervised learning method. Specifically, we model the process of masking images as a reinforcement learning problem and use the results of the reconstruction model as a feedback signal to guide the agent to learn the masking policy to select a more appropriate mask position and size for each image, helping the reconstruction network to learn more fine-grained image representation information and thus improve the downstream segmentation model performance. We conduct extensive experiments on two datasets, Cardiac and TCIA, and the results show that our approach outperforms current state-of-the-art self-supervised learning methods.
基于深度强化学习的自监督医学图像分割自适应掩蔽策略
尽管基于掩膜图像建模的自监督学习方法在提高深度学习模型的性能方面取得了一定的成功,但这些方法在确保掩膜区域最适合每个图像方面存在困难,导致分割网络在预训练中无法获得最佳权值。因此,我们提出了一种新的自适应掩蔽策略自监督学习方法。具体来说,我们将屏蔽图像的过程建模为一个强化学习问题,并将重建模型的结果作为反馈信号,引导智能体学习屏蔽策略,为每张图像选择更合适的屏蔽位置和大小,帮助重建网络学习更细粒度的图像表示信息,从而提高下游分割模型的性能。我们在Cardiac和TCIA两个数据集上进行了广泛的实验,结果表明我们的方法优于当前最先进的自监督学习方法。
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