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首页> 外文期刊>Microscopy and microanalysis: The official journal of Microscopy Society of America, Microbeam Analysis Society, Microscopical Society of Canada >Sparse Scanning Electron Microscopy Data Acquisition and Deep Neural Networks for Automated Segmentation in Connectomics
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Sparse Scanning Electron Microscopy Data Acquisition and Deep Neural Networks for Automated Segmentation in Connectomics

机译:稀疏扫描电子显微镜数据采集和深度神经网络,用于ConnectMics中的自动分割

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摘要

With the growing importance of three-dimensional and very large field of view imaging, acquisition time becomes a serious bottleneck. Additionally, dose reduction is of importance when imaging material like biological tissue that is sensitive to electron radiation. Random sparse scanning can be used in the combination with image reconstruction techniques to reduce the acquisition time or electron dose in scanning electron microscopy. In this study, we demonstrate a workflow that includes data acquisition on a scanning electron microscope, followed by a sparse image reconstruction based on compressive sensing or alternatively using neural networks. Neuron structures are automatically segmented from the reconstructed images using deep learning techniques. We show that the average dwell time per pixel can be reduced by a factor of 2-3, thereby providing a real-life confirmation of previous results on simulated data in one of the key segmentation applications in connectomics and thus demonstrating the feasibility and benefit of random sparse scanning techniques for a specific real-world scenario.
机译:随着三维和非常大的视野成像的越来越重要,采集时间成为一个严重的瓶颈。另外,当对电子辐射敏感的生物组织如生物组织这样的成像材料时,减少剂量是重要的。随机稀疏扫描可用于与图像重建技术的组合使用,以减少扫描电子显微镜中的采集时间或电子剂量。在这项研究中,我们展示了一种工作流程,其包括在扫描电子显微镜上的数据采集,然后基于压缩感测或使用神经网络的稀疏图像重建。使用深度学习技术,神经元结构自动从重建的图像中分段。我们表明,每个像素的平均停留时间可以减小2-3的因子,从而在ConnectMics中的一个密钥分段应用中,在模拟数据中提供了先前结果的实际确认,从而展示了可行性和益处用于特定真实世界场景的随机稀疏扫描技术。

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