A New Generative Replay Approach for Incremental Class Learning of Medical Image for Semantic Segmentation

Mingyang Liu, Li Xiao, Huiqin Jiang, Qing He
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Abstract

Deep neural networks suffer from the notorious problem of catastrophic forgetting when the tasks keep increasing. The inaccessibility of previous data due to privacy limitations and other issues directly leads to a significant drop in performance in prior tasks. Existing incremental class learning (ICL) methods in semantic segmentation are mostly regularization-based. While in this work, we incorporate a generative replay-based approach to alleviating catastrophic forgetting for the first time. We introduce SegGAN to generate both previous images and the corresponding pixel-level labels to circumvent privacy limitations and replay them to retain learned knowledge in the subsequent learning steps. Furthermore, we propose a novel filtering mechanism to select high-quality generated data by the consistency constraint of the Pseudo-Labeling and generative replay method. Specifically, we use Pseudo-Labeling to obtain the pseudo-labels of the generated images and select reliable data with high confidence by comparing generated labels with pseudo-labels.
医学图像语义分割增量类学习的生成重放新方法
当任务不断增加时,深度神经网络就会出现灾难性遗忘的问题。由于隐私限制等问题导致之前的数据无法访问,直接导致之前任务的性能显著下降。现有的增量类学习(ICL)语义分割方法大多是基于正则化的。在这项工作中,我们首次采用了一种基于生成重播的方法来减轻灾难性遗忘。我们引入SegGAN来生成之前的图像和相应的像素级标签,以规避隐私限制,并在随后的学习步骤中重播它们以保留所学的知识。此外,我们提出了一种新的过滤机制,通过伪标记和生成重播方法的一致性约束来选择高质量的生成数据。具体来说,我们使用伪标签来获取生成图像的伪标签,并通过将生成的标签与伪标签进行比较,选择高置信度的可靠数据。
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