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Estimating Betti Numbers Using Deep Learning

机译:使用深度学习估算Betti数

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This paper proposes an efficient computational approach for estimating the topology of manifold data as it may occur in applications. For two- or three-dimensional point cloud data, the computation of Betti numbers using persistent homology tools can already be computationally very expensive. We propose an alternative approach that employs deep learning to estimate Betti numbers of manifolds approximated by point clouds. A critical aspect in this new approach is the generation of suitable synthetic training data of scalable topological complexity. Once deep neural networks are trained on this data, inference can be computationally efficient and robust to noise. The pilot results of our study for two- and three-dimensional data support the hypothesis that deep convolutional neural networks can estimate Betti numbers of simulated data that has a topological complexity beyond immediate human visual comprehension. The approach could be generalised beyond estimating the numbers of holes, cavities and tunnels in low-dimensional manifolds to counting high-dimensional holes in high-dimensional data.
机译:本文提出了一种有效的计算方法,用于估计歧管数据的拓扑,因为它可能发生在应用中。对于两个或三维点云数据,使用持久性同源工具的Betti号码的计算已经可以计算非常昂贵。我们提出了一种替代方法,可以深入学习,以估计被点云近似的歧管的替代数。这种新方法中的一个关键方面是产生可扩展拓扑复杂性的合适的合成训练数据。一旦深度神经网络接受了此数据培训,推理可以计算地高效且稳健地噪声。我们对二维数据和三维数据的研究的试验结果支持深度卷积神经网络可以估计具有超出立即人类视觉理解的拓扑复杂性的模拟数据的博彩匹集数。该方法可以广泛地估计低维歧管中的孔,空腔和隧道的数量,以计算高维数据中的高维孔。

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