结合降尺度和卷积神经网络的模拟四维图像数据拓扑类型估计

IF 7.8 1区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Khalil Mathieu Hannouch, Stephan Chalup
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引用次数: 0

摘要

四维(4D)图像类型数据的拓扑分析受到这些数据集可以达到的巨大规模的挑战。这可能导致直接应用方法,如持久同调和卷积神经网络(cnn),由于计算限制而不切实际。本研究旨在估计四维图像型数据立方体的拓扑类型,这些数据立方体的拓扑复杂性和大小超过了我们目前的处理能力。使用合成的4D数据和真实世界的3D数据集的实验表明,在训练CNN之前,通过对数据应用降尺度方法来规避计算复杂性问题是可能的。这是可以实现的,即使持久的同源性软件表明,缩小可以显著改变训练数据的同源性。当提供缩小的测试数据时,CNN仍然可以估计原始样本立方体的Betti数,准确率超过80%,优于在相同条件下精度下降的持久同源方法。cnn的准确性可以通过从数学指导的方法转向更基于视觉的方法来进一步提高,在这种方法中,空腔类型取代Betti数作为训练目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topology Type Estimation of Simulated 4D Image Data by Combining Downscaling and Convolutional Neural Networks
The topological analysis of four-dimensional (4D) image-type data is challenged by the immense size that these datasets can reach. This can render the direct application of methods, like persistent homology and convolutional neural networks (CNNs), impractical due to computational constraints. This study aims to estimate the topology type of 4D image-type data cubes that exhibit topological intricateness and size above our current processing capacity. The experiments using synthesised 4D data and a real-world 3D data set demonstrate that it is possible to circumvent computational complexity issues by applying downscaling methods to the data before training a CNN. This is achievable even when persistent homology software indicates that downscaling can significantly alter the homology of the training data. When provided with downscaled test data, the CNN can still estimate the Betti numbers of the original sample cubes with over 80% accuracy, which outperforms the persistent homology approach, whose accuracy deteriorates under the same conditions. The accuracy of the CNNs can be further increased by moving from a mathematically-guided approach to a more vision-based approach where cavity types replace the Betti numbers as training targets.
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来源期刊
ACM Transactions on Graphics
ACM Transactions on Graphics 工程技术-计算机:软件工程
CiteScore
14.30
自引率
25.80%
发文量
193
审稿时长
12 months
期刊介绍: ACM Transactions on Graphics (TOG) is a peer-reviewed scientific journal that aims to disseminate the latest findings of note in the field of computer graphics. It has been published since 1982 by the Association for Computing Machinery. Starting in 2003, all papers accepted for presentation at the annual SIGGRAPH conference are printed in a special summer issue of the journal.
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