Adaptive Structured-Light 3D Surface Imaging with Cross-Domain Learning

IF 9.8 1区 物理与天体物理 Q1 OPTICS Laser & Photonics Reviews Pub Date : 2025-01-06 DOI:10.1002/lpor.202401609
Xinsheng Li, Shijie Feng, Wenwu Chen, Ziheng Jin, Qian Chen, Chao Zuo
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Abstract

The rapid development of artificial intelligence (AI) technology is leading a paradigm shift in optical metrology, from physics- and knowledge-based modeling to data-driven learning. In particular, the integration of structured-light techniques with deep learning has garnered widespread attention and achieved significant success due to its capability to enable single-frame, high-speed, and high-accuracy 3D surface imaging. However, most algorithms based on deep neural networks (DNNs) face a critical challenge: they assume the training and test data are independent and identically distributed, leading to performance degradation when applied across different image domains, especially when test images are acquired from unseen systems and environments. A cross-domain learning framework for adaptive structured-light 3D imaging is proposed to address this challenge. This framework's adaptability is enhanced by a novel mixture-of-experts (MoE) architecture, capable of dynamically synthesizing a network by integrating contributions from multiple expert DNNs. Experimental results demonstrate the method exhibits superior generalization performance across diverse systems and environments over both “specialist” DNNs developed for fixed domains and “generalist” DNNs trained by brute-force approaches. This work offers fresh insights into substantially enhancing the generalization of deep-learning-based structured-light 3D imaging and advances the development of versatile, robust AI-driven optical metrology techniques.

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来源期刊
CiteScore
14.20
自引率
5.50%
发文量
314
审稿时长
2 months
期刊介绍: Laser & Photonics Reviews is a reputable journal that publishes high-quality Reviews, original Research Articles, and Perspectives in the field of photonics and optics. It covers both theoretical and experimental aspects, including recent groundbreaking research, specific advancements, and innovative applications. As evidence of its impact and recognition, Laser & Photonics Reviews boasts a remarkable 2022 Impact Factor of 11.0, according to the Journal Citation Reports from Clarivate Analytics (2023). Moreover, it holds impressive rankings in the InCites Journal Citation Reports: in 2021, it was ranked 6th out of 101 in the field of Optics, 15th out of 161 in Applied Physics, and 12th out of 69 in Condensed Matter Physics. The journal uses the ISSN numbers 1863-8880 for print and 1863-8899 for online publications.
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