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Single-Shot 3D Shape Reconstruction Using Structured Light and Deep Convolutional Neural Networks

机译:使用结构光和深卷积神经网络的单次3D形状重建

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摘要

Single-shot 3D imaging and shape reconstruction has seen a surge of interest due to the ever-increasing evolution in sensing technologies. In this paper, a robust single-shot 3D shape reconstruction technique integrating the structured light technique with the deep convolutional neural networks (CNNs) is proposed. The input of the technique is a single fringe-pattern image, and the output is the corresponding depth map for 3D shape reconstruction. The essential training and validation datasets with high-quality 3D ground-truth labels are prepared by using a multi-frequency fringe projection profilometry technique. Unlike the conventional 3D shape reconstruction methods which involve complex algorithms and intensive computation to determine phase distributions or pixel disparities as well as depth map, the proposed approach uses an end-to-end network architecture to directly carry out the transformation of a 2D image to its corresponding 3D depth map without extra processing. In the approach, three CNN-based models are adopted for comparison. Furthermore, an accurate structured-light-based 3D imaging dataset used in this paper is made publicly available. Experiments have been conducted to demonstrate the validity and robustness of the proposed technique. It is capable of satisfying various 3D shape reconstruction demands in scientific research and engineering applications.
机译:单次3D成像和形状重建所看到的感兴趣的兴趣激增,因为传感技术的进化不断增加。本文提出了一种坚固的单射3D形重建技术,与深卷积神经网络(CNNS)相结合的结构化光技术。该技术的输入是单个条纹图案图像,输出是3D形重建的相应深度图。具有高质量3D地基标签的基本培训和验证数据集是通过使用多频率的边缘投影轮廓技术来制备的。与涉及复杂算法和密集计算的传统3D形状重建方法不同,以确定相位分布或像素差异以及深度图,所提出的方法使用端到端网络架构直接执行2D图像的变换它相应的3D深度图无需额外处理。在该方法中,采用了三种基于CNN的模型进行比较。此外,本文使用的准确结构化的基于光的3D成像数据集是公开可用的。已经进行了实验以证明所提出的技术的有效性和稳健性。它能够满足科学研究和工程应用中的各种3D形状重建需求。

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