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Guided Proofreading of Automatic Segmentations for Connectomics

机译:Connectomics自动细分的指导性校对

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Automatic cell image segmentation methods in connectomics produce merge and split errors, which require correction through proofreading. Previous research has identified the visual search for these errors as the bottleneck in interactive proofreading. To aid error correction, we develop two classifiers that automatically recommend candidate merges and splits to the user. These classifiers use a convolutional neural network (CNN) that has been trained with errors in automatic segmentations against expert-labeled ground truth. Our classifiers detect potentially-erroneous regions by considering a large context region around a segmentation boundary. Corrections can then be performed by a user with yeso decisions, which reduces variation of information 7.5× faster than previous proofreading methods. We also present a fully-automatic mode that uses a probability threshold to make merge/split decisions. Extensive experiments using the automatic approach and comparing performance of novice and expert users demonstrate that our method performs favorably against state-of-the-art proofreading methods on different connectomics datasets.
机译:连接组学中的自动细胞图像分割方法会产生合并和拆分错误,需要通过校对进行校正。先前的研究已将对这些错误的视觉搜索确定为交互式校对的瓶颈。为了帮助进行纠错,我们开发了两个分类器,它们自动向用户推荐候选合并和拆分。这些分类器使用卷积神经网络(CNN),该卷积神经网络已针对专家标记的地面真相进行了自动分段错误训练。我们的分类器通过考虑分割边界周围的较大上下文区域来检测潜在的错误区域。然后,用户可以按是/否决定执行更正,这比以前的校对方法将信息变化的速度降低了7.5倍。我们还提出了一种全自动模式,该模式使用概率阈值来做出合并/拆分决策。使用自动方法进行了广泛的实验,并比较了新手和专家用户的性能,结果表明,在不同的connectomics数据集上,我们的方法优于最新的校对方法。

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