Li Yixuan, Qian Jiaming, Feng Shijie, Chen Qian, Zuo Chao
Opt Express. 2022 Jan 31;30(3):3424-3442. doi: 10.1364/OE.449468.
Single-shot fringe projection profilometry (FPP) is essential for retrieving the absolute depth information of the objects in high-speed dynamic scenes. High-precision 3D reconstruction using only one single pattern has become the ultimate goal in FPP. The frequency-multiplexing (FM) method is a promising strategy for realizing single-shot absolute 3D measurement by compounding multi-frequency fringe information for phase unwrapping. In order to solve the problem of serious spectrum aliasing caused by multiplexing schemes that cannot be removed by traditional spectrum analysis algorithms, we apply deep learning to frequency multiplexing composite fringe projection and propose a composite fringe projection deep learning profilometry (CDLP). By combining physical model and data-driven approaches, we demonstrate that the model generated by training an improved deep convolutional neural network can directly perform high-precision and unambiguous phase retrieval on a single-shot spatial frequency multiplexing composite fringe image. Experiments on both static and dynamic scenes demonstrate that our method can retrieve robust and unambiguous phases information while avoiding spectrum aliasing and reconstruct high-quality absolute 3D surfaces of objects only by projecting a single composite fringe image.
单次条纹投影轮廓术(FPP)对于获取高速动态场景中物体的绝对深度信息至关重要。仅使用一个单一图案进行高精度三维重建已成为FPP的最终目标。频率复用(FM)方法是一种很有前景的策略,通过复合多频条纹信息进行相位解缠来实现单次绝对三维测量。为了解决传统频谱分析算法无法消除的复用方案导致的严重频谱混叠问题,我们将深度学习应用于频率复用复合条纹投影,并提出了一种复合条纹投影深度学习轮廓术(CDLP)。通过结合物理模型和数据驱动方法,我们证明了通过训练改进的深度卷积神经网络生成的模型可以直接对单次空间频率复用复合条纹图像进行高精度且无歧义的相位检索。在静态和动态场景上的实验表明,我们的方法能够在避免频谱混叠的同时检索到稳健且无歧义的相位信息,并且仅通过投影一幅单一的复合条纹图像就能重建物体的高质量绝对三维表面。