Zhou Guiyu, Zhang Bo, Li Qinghao, Zhao Qin, Zhang Shengyao
School of Electronic Information and Engineering, Yibin University, Yibin, China.
Shanghai Judong Semiconductor Company Limited, Shanghai, China.
PLoS One. 2025 Feb 25;20(2):e0319071. doi: 10.1371/journal.pone.0319071. eCollection 2025.
This study addresses the limitations of linear mapping in two-dimensional gimbal control for moving target tracking, which results in significant control errors and slow response times. To overcome these issues, we propose a nonlinear mapping control method that enhances the success rate of light source target tracking systems. Using Raspberry Pi 4B and OpenCV, the control system performs real-time recognition of rectangular frames and laser spot images. The tracking system, which includes an OpenMV H7 Plus camera, captures and processes the laser spot path. Both systems are connected to an STM32F407ZGT6 microcontroller to drive a 42-step stepper motor with precise control. By adjusting the parameter c of the nonlinear mapping curve, we optimize the system's performance, balancing the response speed and stability. Our results show a significant improvement in control accuracy, with a miss rate of 3.3%, an average error rate of 0.188% at 1.25 m, and a 100% success rate in target tracking. The proposed nonlinear mapping control method offers substantial advancements in real-time tracking and control systems, demonstrating its potential for broader application in intelligent control fields.
本研究解决了二维万向节控制中线性映射在移动目标跟踪方面的局限性,这种局限性会导致显著的控制误差和较慢的响应时间。为克服这些问题,我们提出了一种非线性映射控制方法,该方法提高了光源目标跟踪系统的成功率。控制系统使用树莓派4B和OpenCV对矩形框和激光光斑图像进行实时识别。包括OpenMV H7 Plus相机的跟踪系统捕获并处理激光光斑路径。这两个系统都连接到STM32F407ZGT6微控制器,以精确控制驱动一个42步的步进电机。通过调整非线性映射曲线的参数c,我们优化了系统性能,平衡了响应速度和稳定性。我们的结果表明控制精度有显著提高,漏失率为3.3%,在1.25米处平均误差率为0.188%,目标跟踪成功率为100%。所提出的非线性映射控制方法在实时跟踪和控制系统方面有实质性进展,证明了其在智能控制领域更广泛应用的潜力。