Wan Maosen, Wang Shuaidong, Zhao Huining, Jia Huakun, Yu Liandong
Appl Opt. 2021 Dec 20;60(36):11196-11204. doi: 10.1364/AO.444730.
Line laser scanning measurement is a major area of interest within the field of 3D laser scanning measurement. Traditionally, sub-pixel extraction of laser stripes is a dominant point for line laser scanning measurement. In particular, the noise separation of laser stripe images and the accuracy of feature extraction of the laser stripe are the main challenges for sub-pixel extraction of laser stripes in complex circumstances. To this end, this study utilizes a robust and accurate method with two steps to extract sub-pixel features of laser stripes for 3D laser scanning measurement. Laser stripe segmentation based on a deep semantic segmentation network is initially implemented for noise elimination of images. Then, the sub-pixel extraction of the gray peak points of laser stripes is accomplished by Shepard sub-pixel interpolation and gray surface fitting, which can adequately utilize the gray distribution of laser stripes and obtain high-precision and anti-interference results. The robustness, effectiveness, and accuracy are verified by comparative experiments with classical methods. The results indicate that the proposed method can obtain much more complete, denser, and smoother results than traditional methods, especially in challenging measurement conditions, such as a large curved surface, a highly reflective surface, or intense ambient light. The accuracy of the proposed method can meet the requirements of high-precision measurement.
线激光扫描测量是三维激光扫描测量领域的一个主要研究方向。传统上,激光条纹的亚像素提取是线激光扫描测量的一个关键点。特别是,激光条纹图像的噪声分离以及激光条纹特征提取的精度是复杂环境下线激光条纹亚像素提取的主要挑战。为此,本研究采用一种稳健且准确的两步法来提取用于三维激光扫描测量的激光条纹亚像素特征。首先,基于深度语义分割网络实现激光条纹分割,以消除图像噪声。然后,通过谢泼德亚像素插值和灰度曲面拟合完成激光条纹灰度峰值点的亚像素提取,该方法能够充分利用激光条纹的灰度分布,获得高精度且抗干扰的结果。通过与经典方法的对比实验验证了该方法的稳健性、有效性和准确性。结果表明,所提方法能够比传统方法获得更完整、更密集且更平滑的结果,尤其是在具有挑战性的测量条件下,如大曲面、高反射表面或强环境光条件下。所提方法的精度能够满足高精度测量的要求。