时间推移序列中进化树结构的重构

Przemyslaw Glowacki, M. Pinheiro, Engin Türetken, R. Sznitman, Daniel Lebrecht, J. Kybic, A. Holtmaat, P. Fua
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引用次数: 10

摘要

我们提出了一种重建二维图像和三维图像堆栈(如神经元轴突或植物分支)中随时间演变的树形结构的方法。我们不是在每张图像中独立重建结构,而是同时对所有图像进行重建,以利用时间一致性约束。我们证明了这个问题可以用一个二次混合整数规划来表述,并且可以有效地求解。我们的方法的结果是提供了一个框架,在重建方面比传统的单一时间实例公式有了实质性的改进。此外,我们的方法的另一个好处是能够自动检测随着时间的推移发生重大变化的地方,这在考虑大量数据时是具有挑战性的。
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Reconstructing Evolving Tree Structures in Time Lapse Sequences
We propose an approach to reconstructing tree structures that evolve over time in 2D images and 3D image stacks such as neuronal axons or plant branches. Instead of reconstructing structures in each image independently, we do so for all images simultaneously to take advantage of temporal-consistency constraints. We show that this problem can be formulated as a Quadratic Mixed Integer Program and solved efficiently. The outcome of our approach is a framework that provides substantial improvements in reconstructions over traditional single time-instance formulations. Furthermore, an added benefit of our approach is the ability to automatically detect places where significant changes have occurred over time, which is challenging when considering large amounts of data.
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