A three-dimensional surface measurement system implemented with Gaussian process based adaptive sampling

Autor: Wenting Wang, Kaidi Zhang, Binglu Zhao, Yuhang Chen
Rok vydání: 2021
Předmět:
Zdroj: Precision Engineering. 72:595-603
ISSN: 0141-6359
DOI: 10.1016/j.precisioneng.2021.07.007
Popis: Self-adaptive surface measurements that can reduce data redundancy and improve time efficiency are in high demand in many fields of science and technology. For this purpose, a system implemented with Gaussian process (GP) adaptive sampling is developed. The non-parametric GP model is applied to reconstruct the topography and guide the subsequent sampling position, which is determined from the inference uncertainty estimation. A criterion is proposed to terminate the GP adaptive measurement automatically without any prior model or data of the topography. Experiments on typical surfaces validate the intelligence, adaptability, and high accuracy of the GP method along with the stabilization of the automatic iteration termination. Compared with traditional raster sampling, data redundancy is reduced and the time efficiency is improved without sacrificing the surface reconstruction accuracy. The proposed method can be implemented in other systems with similar measurement principles, thus benefitting surface characterizations.
Databáze: OpenAIRE