Haoran TangBo WangXiaofei ZhouZhimin HanQiang Lv
Abstract In this study, we introduce a real-time pose estimation for a class of mobile robots with rectangular body (e.g., the common automatic guided vehicles), by integrating odometry and RGB-D images. First, a lightweight object detection model is designed based on the visual information. Then, a pose estimation algorithm is proposed based on the depth value variations within the target region that exhibit specific patterns due to the robot’s three-dimensional geometry and the observation perspective (termed as “differentiated depth information”). To improve the robustness of object detection and pose estimation, a Kalman filter is further constructed by incorporating odometry data. Finally, a series of simulations and experiments are conducted to demonstrate the method’s effectiveness. Experiments show that the proposed algorithm can achieve a speed over 20 Frames Per Second (FPS) together with a good estimation accuracy on a mobile robot equipped with an Nvidia Jetson Nano Developer KIT.
Hao LiLixin ZhengLaicheng YanKai Tang
Ivan DryanovskiWilliam MorrisRavi KaushikJizhong Xiao
Arianna RanaFabio VulpiRocco GalatiAnnalisa MilellaAntonio Petitti
Fan LiuJinhui TangYan SongXinguang XiangTing RuiZhenmin Tang