Deep learning models for optically characterizing 3D printers

被引:11
作者
Chen, Danwu [1 ,2 ]
Urban, Philipp [1 ,3 ]
机构
[1] Fraunhofer Inst Comp Graph Res IGD, Darmstadt, Germany
[2] Tech Univ Darmstadt, Dept Comp Sci, Darmstadt, Germany
[3] Norwegian Univ Sci & Technol NTNU, Gjovik, Norway
来源
OPTICS EXPRESS | 2021年 / 29卷 / 02期
基金
欧盟地平线“2020”;
关键词
NEURAL-NETWORKS; COLOR;
D O I
10.1364/OE.410796
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
Multi-material 3D printers are able to create material arrangements possessing various optical properties. To reproduce these properties, an optical printer model that accurately predicts optical properties from the printer's control values (tonals) is crucial. We present two deep learning-based models and training strategies for optically characterizing 3D printers that achieve both high accuracy with a moderate number of required training samples. The first one is a Pure Deep Learning (PDL) model that is essentially a black-box without any physical ground and the second one is a Deep-Learning-Linearized Cellular Neugebauer (DLLCN) model that uses deep-learning to multidimensionally linearize the tonal-value-space of a cellular Neugebauer model. We test the models on two six-material polyjetting 3D printers to predict both reflectances and translucency. Results show that both models can achieve accuracies sufficient for most applications with much fewer training prints compared to a regular cellular Neugebauer model. (C) 2021 Optical Society of America under the terms of the OSA Open Access Publishing Agreement
引用
收藏
页码:615 / 631
页数:17
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