镜面反射
反射(计算机编程)
计算机科学
投影(关系代数)
人工智能
光学
计算机视觉
频域
轮廓仪
傅里叶变换
灰度
镜面反射高光
材料科学
表面光洁度
算法
物理
图像(数学)
量子力学
复合材料
程序设计语言
作者
Xuwen Song,Lianpo Wang
标识
DOI:10.1109/tii.2024.3438258
摘要
3D reconstruction plays a pivotal role in intelligent manufacturing, industrial inspection, and other fields. Fringe projection profilometry is a widely used 3D reconstruction method due to its high accuracy and noncontact nature. However, when fringe projection profilometry (FPP) is applied to reconstruct highly reflective surfaces, there are not only diffuse reflections, but also undesired specular reflections. Intense specular reflection destroys the sinusoidal characteristics of the fringe pattern, leading to a decrease in 3D reconstruction accuracy. Traditional methods, such as Multiple exposures method, require multiple redundant shots to obtain high-quality fringe patterns, which makes efficiency difficult to meet industrial measurement requirements. Inspired by the application of deep learning in 3D vision, this article proposes a Y-shaped fast Fourier convolutional network (Y-FFC) for high reflection removal to provide high-quality fringe patterns. The cosine characteristics of the grayscale gradient of the sinusoidal fringe pattern make the detection of nonsinusoidal regions more accurate in the gradient domain. In addition, the undesired specular reflection component is easier to distinguish and filter out in the frequency domain. Therefore, the design of Y-FFC fully considers the gradient and frequency information. Experimental results show that the introduction of gradient and frequency information is beneficial for high reflection removal, enabling the reconstruction of industrial workpieces with highly reflective surfaces without the need for additional shots. The mean absolute error for depth measurements of an aircraft blade with a depth of 30 mm was reduced from 0.1332 to 0.0041 mm.
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