One of the critical steps in improving accurate single neuron reconstruction from three-dimensional (3D) optical microscope images is the neuronal structure segmentation. However, they are always hard to segment due to the lack in quality. Despite a series of attempts to apply convolutional neural networks (CNNs) on this task, noise and disconnected gaps are still challenging to alleviate with the neglect of the non-local features of graph-like tubular neural structures. Hence, we present an end-to-end segmentation network by jointly considering the local appearance and the global geometry traits through graph reasoning and a skeleton-based auxiliary loss. The evaluation results on the Janelia dataset from the BigNeuron project demonstrate that our proposed method exceeds the counterpart algorithms in performance.
翻译:从三维(3D)光学显微镜图像中改进准确单神经重建的关键步骤之一是神经结构分离,然而,由于缺乏质量,它们总是难以分割。尽管在这项工作上试图应用进化神经网络(CNNs ),但噪音和脱节差距仍然难以缓解,因为忽略了像图一样的管状神经结构的非局部特征。因此,我们通过通过图表推理和基于骨骼的辅助损失,共同考虑当地外观和全球几何特征,提出了一个端到端分解网络。 大奈伦项目对Janelia数据集的评价结果表明,我们拟议的方法超过了对应的性能算法。