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Fit4CAD: A point cloud benchmark for fitting simple geometric primitives in CAD models

2021-05-14 14:32:08
Chiara Romanengo, Andrea Raffo, Yifan Qie, Nabil Anwer, Bianca Falcidieno

Abstract

We propose Fit4CAD, a benchmark for the evaluation and comparison of methods for fitting simple geometric primitives in point clouds representing CAD models. This benchmark is meant to help both method developers and those who want to identify the best performing tools. The Fit4CAD dataset is composed by 225 high quality point clouds, each of which has been obtained by sampling a CAD model. The way these elements were created by using existing platforms and datasets makes the benchmark easily expandable. The dataset is already split into a training set and a test set. To assess performance and accuracy of the different primitive fitting methods, various measures are defined. To demonstrate the effective use of Fit4CAD, we have tested it on two methods belonging to two different categories of approaches to the primitive fitting problem: a clustering method based on a primitive growing framework and a parametric method based on the Hough transform.

Abstract (translated)

URL

https://arxiv.org/abs/2105.06858

PDF

https://arxiv.org/pdf/2105.06858.pdf


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