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首页> 外文期刊>Signal, Image and Video Processing >Graph-regularized 3D shape reconstruction from highly anisotropic and noisy images - Springer
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Graph-regularized 3D shape reconstruction from highly anisotropic and noisy images - Springer

机译:从高度各向异性和嘈杂的图像进行图规则化的3D形状重构-Springer

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摘要

Analysis of microscopy images can provide insight into many biological processes. One particularly challenging problem is cellular nuclear segmentation in highly anisotropic and noisy 3D image data. Manually localizing and segmenting each and every cellular nucleus is very time-consuming, which remains a bottleneck in large-scale biological experiments. In this work, we present a tool for automated segmentation of cellular nuclei from 3D fluorescent microscopic data. Our tool is based on state-of-the-art image processing and machine learning techniques and provides a user-friendly graphical user interface. We show that our tool is as accurate as manual annotation and greatly reduces the time for the registration.
机译:显微镜图像的分析可以洞悉许多生物学过程。一个特别具有挑战性的问题是高度各向异性和嘈杂的3D图像数据中的细胞核分割。手动定位和分割每个细胞核非常耗时,这仍然是大规模生物学实验的瓶颈。在这项工作中,我们提出了一种从3D荧光显微镜数据自动分割细胞核的工具。我们的工具基于最新的图像处理和机器学习技术,并提供用户友好的图形用户界面。我们证明了我们的工具与手动注释一样准确,并且大大减少了注册时间。

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