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Deep Semantic Instance Segmentation of Tree-Like Structures Using Synthetic Data

机译:使用合成数据的类树结构的深度语义实例分割

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Tree-like structures, such as blood vessels, often express complexity at very fine scales, requiring high-resolution grids to adequately describe their shape. Such sparse morphology can alternately be represented by locations of centreline points, but learning from this type of data with deep learning is challenging due to it being unordered, and permutation invariant. In this work, we propose a deep neural network that directly consumes unordered points along the centreline of a branching structure, to identify the topology of the represented structure in a single-shot. Key to our approach is the use of a novel multi-task loss function, enabling instance segmentation of arbitrarily complex branching structures. We train the network solely using synthetically generated data, utilizing domain randomization to facilitate the transfer to real 2D and 3D data. Results show that our network can reliably extract meaningful information about branch locations, bifurcations and endpoints, and sets a new benchmark for semantic instance segmentation in branching structures.
机译:诸如血管之类的树状结构通常在非常精细的规模上表现出复杂性,需要高分辨率的网格来充分描述其形状。这种稀疏的形态可以交替地由中心线点的位置来表示,但是通过深度学习从此类数据中学习是具有挑战性的,因为它是无序的,并且排列不变。在这项工作中,我们提出了一个深度神经网络,该神经网络直接消耗沿分支结构中心线的无序点,以单次识别所表示结构的拓扑。我们方法的关键是使用新颖的多任务丢失功能,可以对任意复杂的分支结构进行实例分割。我们仅使用合成生成的数据来训练网络,并利用域随机化来促进向真实2D和3D数据的传输。结果表明,我们的网络可以可靠地提取有关分支位置,分支和端点的有意义的信息,并为分支结构中的语义实例分割树立了新的基准。

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