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Comparing Machine and Deep Learning Methods for Large 3D Heritage Semantic Segmentation

机译:大型3D遗产语义分割的比较机与深层学习方法

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摘要

In recent years semantic segmentation of 3D point clouds has been an argument that involves different fields of application. Cultural heritage scenarios have become the subject of this study mainly thanks to the development of photogrammetry and laser scanning techniques. Classification algorithms based on machine and deep learning methods allow to process huge amounts of data as 3D point clouds. In this context, the aim of this paper is to make a comparison between machine and deep learning methods for large 3D cultural heritage classification. Then, considering the best performances of both techniques, it proposes an architecture named DGCNN-Mod+3Dfeat that combines the positive aspects and advantages of these two methodologies for semantic segmentation of cultural heritage point clouds. To demonstrate the validity of our idea, several experiments from the ArCH benchmark are reported and commented.
机译:近年来,3D点云的语义分割是一个涉及不同应用领域的参数。文化遗产方案已成为本研究的主题,主要这主要由于摄影测量和激光扫描技术的发展。基于机器和深度学习方法的分类算法允许处理大量数据作为3D点云。在这种情况下,本文的目的是对大型3D文化遗产分类进行机器和深度学习方法进行比较。然后,考虑到这两种技术的最佳表现,它提出了一个名为DGCNN-MOD + 3DFeat的架构,该架构结合了这两种方法的积极方面和优势,用于文化遗产点云的语义细分。为了证明我们的想法的有效性,报告并评论了拱门基准的几个实验。

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