Wang Chao, Luo Weixi, Niu Menghui, Li Jiqiang, Song Kechen
School of Transportation, Ludong University, Yantai 264025, China.
School of Mechanical Engineering & Automation, Northeastern University, Shenyang 110819, China.
J Imaging. 2024 Jun 13;10(6):144. doi: 10.3390/jimaging10060144.
Thanks to the line-scanning camera, the measurement method based on line-scanning stereo vision has high optical accuracy, data transmission efficiency, and a wide field of vision. It is more suitable for continuous operation and high-speed transmission of industrial product detection sites. However, the one-dimensional imaging characteristics of the line-scanning camera cause motion distortion during image data acquisition, which directly affects the accuracy of detection. Effectively reducing the influence of motion distortion is the primary problem to ensure detection accuracy. To obtain the two-dimensional color image and three-dimensional contour data of the heavy rail surface at the same time, a binocular color line-scanning stereo vision system is designed to collect the heavy rail surface data combined with the bright field illumination of the symmetrical linear light source. Aiming at the image motion distortion caused by system installation error and collaborative acquisition frame rate mismatch, this paper uses the checkerboard target and two-step cubature Kalman filter algorithm to solve the nonlinear parameters in the motion distortion model, estimate the real motion, and correct the image information. The experiments show that the accuracy of the data contained in the image is improved by 57.3% after correction.
得益于线扫描相机,基于线扫描立体视觉的测量方法具有高光学精度、数据传输效率和广阔视野。它更适合工业产品检测现场的连续运行和高速传输。然而,线扫描相机的一维成像特性在图像数据采集过程中会导致运动失真,这直接影响检测精度。有效降低运动失真的影响是确保检测精度的首要问题。为了同时获取重轨表面的二维彩色图像和三维轮廓数据,设计了一种双目彩色线扫描立体视觉系统,结合对称线性光源的明场照明来采集重轨表面数据。针对系统安装误差和协同采集帧率不匹配引起的图像运动失真问题,本文采用棋盘格靶标和两步容积卡尔曼滤波算法求解运动失真模型中的非线性参数,估计真实运动并校正图像信息。实验表明,校正后图像中所含数据的精度提高了57.3%。