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首页> 外文期刊>IEEE Transactions on Medical Imaging >Residual Deconvolutional Networks for Brain Electron Microscopy Image Segmentation
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Residual Deconvolutional Networks for Brain Electron Microscopy Image Segmentation

机译:残留反卷积网络用于脑电子显微镜图像分割

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摘要

Accurate reconstruction of anatomical connections between neurons in the brain using electron microscopy (EM) images is considered to be the gold standard for circuit mapping. A key step in obtaining the reconstruction is the ability to automatically segment neurons with a precision close to human-level performance. Despite the recent technical advances in EM image segmentation, most of them rely on hand-crafted features to some extent that are specific to the data, limiting their ability to generalize. Here, we propose a simple yet powerful technique for EM image segmentation that is trained end-to-end and does not rely on prior knowledge of the data. Our proposed residual deconvolutional network consists of two information pathways that capture full-resolution features and contextual information, respectively. We showed that the proposed model is very effective in achieving the conflicting goals in dense output prediction; namely preserving full-resolution predictions and including sufficient contextual information. We applied our method to the ongoing open challenge of 3D neurite segmentation in EM images. Our method achieved one of the top results on this open challenge. We demonstrated the generality of our technique by evaluating it on the 2D neurite segmentation challenge dataset where consistently high performance was obtained. We thus expect our method to generalize well to other dense output prediction problems.
机译:使用电子显微镜(EM)图像准确重建大脑神经元之间的解剖连接被认为是电路映射的金标准。获得重建的关键步骤是能够以接近人类水平的性能自动分割神经元。尽管最近在EM图像分割技术上取得了进步,但是大多数还是在一定程度上依赖于数据特有的手工制作的功能,从而限制了它们的概括能力。在这里,我们提出了一种简单而强大的EM图像分割技术,该技术经过端到端训练,并且不依赖于数据的先验知识。我们提出的残差反卷积网络由两个信息路径组成,分别捕获全分辨率特征和上下文信息。我们表明,提出的模型对于实现密集输出预测中的冲突目标非常有效;即保留全分辨率预测并包括足够的上下文信息。我们将我们的方法应用于EM图像中正在进行的3D神经突分割的公开挑战。我们的方法在这一公开挑战中取得了最高成绩之一。我们通过在2D神经突分割挑战数据集上对其进行评估来证明了我们技术的通用性,该数据集获得了一致的高性能。因此,我们期望我们的方法能够很好地推广到其他密集输出预测问题。

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