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Graph-based active learning of agglomeration (GALA): a Python library to segment 2D and 3D neuroimages

机译:基于图的团聚主动学习(GALA):用于分割2D和3D神经图像的Python库

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摘要

The aim in high-resolution connectomics is to reconstruct complete neuronal connectivity in a tissue. Currently, the only technology capable of resolving the smallest neuronal processes is electron microscopy (EM). Thus, a common approach to network reconstruction is to perform (error-prone) automatic segmentation of EM images, followed by manual proofreading by experts to fix errors. We have developed an algorithm and software library to not only improve the accuracy of the initial automatic segmentation, but also point out the image coordinates where it is likely to have made errors. Our software, called gala (graph-based active learning of agglomeration), improves the state of the art in agglomerative image segmentation. It is implemented in Python and makes extensive use of the scientific Python stack (numpy, scipy, networkx, scikit-learn, scikit-image, and others). We present here the software architecture of the gala library, and discuss several designs that we consider would be generally useful for other segmentation packages. We also discuss the current limitations of the gala library and how we intend to address them.
机译:高分辨率连接组学的目的是在组织中重建完整的神经元连接。当前,唯一能够解决最小神经元过程的技术是电子显微镜(EM)。因此,一种常见的网络重建方法是对EM图像执行(容易出错的)自动分段,然后由专家进行手动校对以修复错误。我们开发了一种算法和软件库,不仅可以提高初始自动分割的准确性,而且可以指出可能会出现错误的图像坐标。我们的软件称为Gala(基于图的集聚主动学习),可改善集聚图像分割的最新技术。它是用Python实现的,并广泛使用了科学的Python堆栈(numpy,scipy,networkx,scikit-learn,scikit-image等)。我们在这里介绍了晚会库的软件架构,并讨论了我们认为通常对其他细分程序包有用的几种设计。我们还将讨论Gala库的当前限制以及我们打算如何解决这些限制。

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