Ding Yi, Che Jiaxing, Zhou Zhiming, Bian Jingyuan
The School of Automation Science and Electrical Engineering, Beihang University, Beijing 100083, China.
Sensors (Basel). 2024 Mar 6;24(5):1709. doi: 10.3390/s24051709.
Ground target detection and positioning systems based on lightweight unmanned aerial vehicles (UAVs) are increasing in value for aerial reconnaissance and surveillance. However, the current method for estimating the target's position is limited by the field of view angle, rendering it challenging to fulfill the demands of a real-time omnidirectional reconnaissance operation. To address this issue, we propose an Omnidirectional Optimal Real-Time Ground Target Position Estimation System (Omni-OTPE) that utilizes a fisheye camera and LiDAR sensors. The object of interest is first identified in the fisheye image, and then, the image-based target position is obtained by solving using the fisheye projection model and the target center extraction algorithm based on the detected edge information. Next, the LiDAR's real-time point cloud data are filtered based on position-direction constraints using the image-based target position information. This step allows for the determination of point cloud clusters that are relevant to the characterization of the target's position information. Finally, the target positions obtained from the two methods are fused using an optimal Kalman fuser to obtain the optimal target position information. In order to evaluate the positioning accuracy, we designed a hardware and software setup, mounted on a lightweight UAV, and tested it in a real scenario. The experimental results validate that our method exhibits significant advantages over traditional methods and achieves a real-time high-performance ground target position estimation function.
基于轻型无人机的地面目标检测与定位系统在航空侦察和监视中的价值日益凸显。然而,当前用于估计目标位置的方法受视角限制,难以满足实时全方位侦察行动的需求。为解决这一问题,我们提出了一种全向最优实时地面目标位置估计系统(Omni-OTPE),该系统利用鱼眼相机和激光雷达传感器。首先在鱼眼图像中识别出感兴趣的物体,然后通过使用鱼眼投影模型和基于检测到的边缘信息的目标中心提取算法求解,获得基于图像的目标位置。接下来,利用基于图像的目标位置信息,根据位置-方向约束对激光雷达的实时点云数据进行滤波。这一步骤有助于确定与目标位置信息特征相关的点云簇。最后,使用最优卡尔曼融合器对从两种方法获得的目标位置进行融合,以获得最优目标位置信息。为了评估定位精度,我们设计了一个硬件和软件装置,安装在轻型无人机上,并在实际场景中进行了测试。实验结果验证了我们的方法相对于传统方法具有显著优势,并实现了实时高性能的地面目标位置估计功能。