A distributed approach for persistent homology computation on a large scale

Riccardo Ceccaroni, Lorenzo Di Rocco, Umberto Ferraro Petrillo, Pierpaolo Brutti
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Abstract

Persistent homology (PH) is a powerful mathematical method to automatically extract relevant insights from images, such as those obtained by high-resolution imaging devices like electron microscopes or new-generation telescopes. However, the application of this method comes at a very high computational cost that is bound to explode more because new imaging devices generate an ever-growing amount of data. In this paper, we present PixHomology, a novel algorithm for efficiently computing zero-dimensional PH on 2D images, optimizing memory and processing time. By leveraging the Apache Spark framework, we also present a distributed version of our algorithm with several optimized variants, able to concurrently process large batches of astronomical images. Finally, we present the results of an experimental analysis showing that our algorithm and its distributed version are efficient in terms of required memory, execution time, and scalability, consistently outperforming existing state-of-the-art PH computation tools when used to process large datasets.

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大规模持久同源性计算的分布式方法
持久同源性(PH)是一种强大的数学方法,可以自动从图像(如电子显微镜或新一代望远镜等高分辨率成像设备获得的图像)中提取相关的洞察力。然而,这种方法的应用需要非常高的计算成本,而且由于新的成像设备产生的数据量不断增加,计算成本势必会激增。在本文中,我们介绍了 PixHomology,这是一种在二维图像上高效计算零维 PH、优化内存和处理时间的新型算法。通过利用 Apache Spark 框架,我们还介绍了我们算法的分布式版本和几个优化变体,能够并发处理大批量的天文图像。最后,我们介绍了实验分析的结果,表明我们的算法及其分布式版本在所需内存、执行时间和可扩展性方面都很高效,在用于处理大型数据集时始终优于现有的最先进的物理计算工具。
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