Segmentation of nanoscale electron microscopy (EM) images is crucial but still challenging in connectomics research. One reason for this is that none of the existing segmentation methods are error-free, so they require proofreading, which is typically implemented as an interactive, semi-automatic process via manual intervention. Herein, we propose a fully automatic proofreading method based on reinforcement learning that mimics the human decision process of detection, classification, and correction of segmentation errors. We systematically design the proposed system by combining multiple reinforcement learning agents in a hierarchical manner, where each agent focuses only on a specific task while preserving dependency between agents. Furthermore, we demonstrate that the episodic task setting of reinforcement learning can efficiently manage a combination of merge and split errors concurrently presented in the input. We demonstrate the efficacy of the proposed system by comparing it with conventional proofreading methods over various testing cases.
翻译:纳米规模电子显微镜图像的分解至关重要,但在连接缩微镜研究中仍然具有挑战性。 原因之一是,现有的分解方法没有一个是无误的,因此需要校对,通常通过人工干预作为一种互动的半自动过程加以实施。在这里,我们建议一种完全自动的校对方法,其依据是强化学习,它模仿人类的检测、分类和分解误差的决策过程。我们系统地设计了拟议的系统,将多个强化学习剂以等级化的方式结合起来,其中每个代理只注重特定任务,同时保持代理之间的依赖性。此外,我们证明,强化学习的附带任务设置能够有效地管理输入中同时出现的合并和分裂错误的组合。我们通过将拟议系统与各种测试案例的常规校对方法进行比较,以显示系统的有效性。