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Deep Convolutional Encoder-Decoder Architecture for Neuronal Structure Segmentation

机译:神经元结构分割的深卷积编码器 - 解码器架构

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Electro microscopic connectomics is a practical application of research direction. It determines whether a nerve is damaged by judging the connectivity of nerves. However, the formidable size of Electro Microscopic (EM) image data generated by serial-section Transmitted Electron Microscopy (ssTEM) severely depends on human annotation, which is impractical. One of the main challenges in connectomics research is to take minimal user intervention into account during neuronal structures automatic segmentation. To address this problem, a network is constructed to segment neuronal structures automatically, which expands receptive field of feature maps. Besides, we also introduce data augmentation method to use the available training data more efficiently. Our model is proposed based on a context network, and its architecture consists of an encoding path that enables feature extraction. The novel introduction of summation-based skip connection is aimed to connect decoding path with encoding path. Finally, real experiments with ISBI EM dataset validate the approach.
机译:电磁型Connectomics是研究方向的实际应用。它决定了通过判断神经的连通性损坏了神经。然而,由串行截面传输的电子显微镜(STEM)产生的电微观(EM)图像数据的强大尺寸严重取决于人类注释,这是不切实际的。 Connectomics研究中的主要挑战之一是在神经元结构自动分割期间考虑最小的用户干预。为了解决这个问题,网络被自动构造成分割神经元结构,这扩大了特征图的接收领域。此外,我们还介绍了数据增强方法,以更有效地使用可用的培训数据。我们的模型是基于上下文网络提出的,其架构包括启用特征提取的编码路径。基于求和的跳过连接的新颖引入旨在将解码路径连接到编码路径。最后,具有ISBI EM数据集的真实实验验证了该方法。

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