论文标题

具有深度学习的几何限制和单相绝对3D形状测量

Deep-learning-enabled geometric constraints and phase unwrapping for single-shot absolute 3D shape measurement

论文作者

Qian, Jiaming, Feng, Shijie, Tao, Tianyang, Hu, Yan, Li, Yixuan, Chen, Qian, Zuo, Chao

论文摘要

边缘投影概要仪(FPP)是最受欢迎的三维(3D)形状测量技术之一,并且在智能制造,缺陷检测和其他一些重要应用中越来越普遍采用。在FPP中,如何有效恢复绝对阶段一直是一个巨大的挑战。基于几何约束的立体相解开(SPU)技术可以消除相位的歧义,而无需投影任何其他条纹模式,从而最大程度地提高了绝对阶段检索的效率。受深度学习技术在阶段分析中的成功启发的启发,我们证明了深度学习可以是一种有效的工具,可以有机地统一相位检索,几何约束和阶段解开步骤,使其成为全面的框架。在广泛的培训数据集的驱动下,中立网络可以逐渐“学习”如何将一个高频附带模式传输到“物理有意义的”和“最有可能”的绝对阶段,而不是像《会议方法》中那样“逐步”。基于训练有素的框架,仅基于单帧投影就可以实现高质量的相位检索和稳健的歧义删除。实验结果表明,与传统的SPU相比,我们的方法可以更有效,稳定地拆开较大的测量量,并具有较少的相机视图。还讨论了有关拟议方法的限制。我们认为,所提出的方法代表了高速,高临界性,无运动艺术的绝对3D形状测量的重要一步,从单个边缘模式中,复杂物体的绝对3D形状测量。

Fringe projection profilometry (FPP) is one of the most popular three-dimensional (3D) shape measurement techniques, and has becoming more prevalently adopted in intelligent manufacturing, defect detection and some other important applications. In FPP, how to efficiently recover the absolute phase has always been a great challenge. The stereo phase unwrapping (SPU) technologies based on geometric constraints can eliminate phase ambiguity without projecting any additional fringe patterns, which maximizes the efficiency of the retrieval of absolute phase. Inspired by the recent success of deep learning technologies for phase analysis, we demonstrate that deep learning can be an effective tool that organically unifies the phase retrieval, geometric constraints, and phase unwrapping steps into a comprehensive framework. Driven by extensive training dataset, the neutral network can gradually "learn" how to transfer one high-frequency fringe pattern into the "physically meaningful", and "most likely" absolute phase, instead of "step by step" as in convention approaches. Based on the properly trained framework, high-quality phase retrieval and robust phase ambiguity removal can be achieved based on only single-frame projection. Experimental results demonstrate that compared with traditional SPU, our method can more efficiently and stably unwrap the phase of dense fringe images in a larger measurement volume with fewer camera views. Limitations about the proposed approach are also discussed. We believe the proposed approach represents an important step forward in high-speed, high-accuracy, motion-artifacts-free absolute 3D shape measurement for complicated object from a single fringe pattern.

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