Sparse Annotation is Sufficient for Bootstrapping Dense Segmentation.

Vijay Venu Thiyagarajan, Arlo Sheridan, Kristen M Harris, Uri Manor
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Abstract

Producing dense 3D reconstructions from biological imaging data is a challenging instance segmentation task that requires significant ground-truth training data for effective and accurate deep learning-based models. Generating training data requires intense human effort to annotate each instance of an object across serial section images. Our focus is on the especially complicated brain neuropil, comprising an extensive interdigitation of dendritic, axonal, and glial processes visualized through serial section electron microscopy. We developed a novel deep learning-based method to generate dense 3D segmentations rapidly from sparse 2D annotations of a few objects on single sections. Models trained on the rapidly generated segmentations achieved similar accuracy as those trained on expert dense ground-truth annotations. Human time to generate annotations was reduced by three orders of magnitude and could be produced by non-expert annotators. This capability will democratize generation of training data for large image volumes needed to achieve brain circuits and measures of circuit strengths.

基于深度学习的策略,从稀疏注释的二维图像中生成密集的三维分割。
从生物成像数据中生成密集的三维重建是一项具有挑战性的实例分割任务,需要大量的地面实况训练数据,才能建立有效、准确的基于深度学习的模型。生成训练数据需要大量的人力来注释序列切片图像中的每个对象实例。我们的研究重点是特别复杂的脑神经髓质,它包括通过序列切片电子显微镜观察到的树突、轴突和神经胶质过程的广泛交叉。我们开发了一种基于深度学习的新方法,可从单个切片上少数对象的稀疏二维注释中快速生成密集的三维分割。根据快速生成的分割结果训练的模型与根据专家高密度地面实况注释训练的模型具有相似的准确性。人工生成注释的时间减少了三个数量级,非专业注释人员也能生成注释。这种能力将使生成大脑回路和回路强度测量所需的大量图像的训练数据平民化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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