Источник
ACM Transactions on Graphics
Дата публикации
07.07.2022
Авторы
Евгений Бурнаев Альберт Матвеев Руслан Рахимов Глеб Бобровских Ваге Егиазарян Эмиль Богомолов Daniele Panozzo Денис Зорин Алексей Артемов
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DEF: deep estimation of sharp geometric features in 3D shapes

Аннотация

We propose Deep Estimators of Features (DEFs), a learning-based framework for predicting sharp geometric features in sampled 3D shapes. Differently fr om existing data-driven methods, which reduce this problem to feature classification, we propose to regress a scalar field representing the distance from point samples to the closest feature line on local patches. Our approach is the first that scales to massive point clouds by fusing distance-to-feature estimates obtained on individual patches. We extensively evaluate our approach against related state-of-the-art methods on newly proposed synthetic and real-world 3D CAD model benchmarks. Our approach not only outperforms these (with improvements in Recall and False Positives Rates), but generalizes to real-world scans after training our model on synthetic data and fine-tuning it on a small dataset of scanned data. We demonstrate a downstream application, wh ere we reconstruct an explicit representation of straight and curved sharp feature lines from range scan data.

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