The gimbal platform has been widely used in photogrammetry and robot perceptual module to stabilize the camera pose, thereby improving the captured video quality. Usually a gimbal is mainly composed of sensors and actuator parts. The orientation measurements from sensor can be inputted directly to actuator to steer camera towards proper pose. But the off-the-shelf custom product is either quite expensive, or depending on highly precise IMU and Brushless DC motor with hall sensor to estimate angles, which is prone to suffer from accumulative drift over long-term operation. In this paper, a CV based new tracking and fusion algorithm dedicated for gimbal system on drones operating in nature is proposed, main contributions are listed as below: a) a light-weight Resnet -18 backbone based network model was trained from scratch, and deployed onto Jetson Nano platform to segment the image into binary parts (ground and sky). b) geometric primitives tracking of the skyline and ground plane in 3D as cues, along with orientation estimation from IMU can provide multiple guesses for orientation. c) spherical surface based adaptive particle sampling can fuse orientation from aforementioned sensor sources efficiently. The final prototyping algorithm is tested on the real-time embedded system, and with both simulation on ground and real functional tests in the air.
翻译:Gimbal 平台被广泛用于光度测量和机器人感知模块,以稳定相机的表面,从而改善摄像质质量。Gimbal通常主要由传感器和动画部件组成。传感器的定向测量可直接输入到导动器上,以引导照相机的正常面貌。但是,现成定制产品要么相当昂贵,要么取决于高精度IMU和Brushless DC发动机和大厅传感器,以估计角度,这种角度很容易在长期操作中受到累积性漂移的影响。在本文件中,为自然操作的无人驾驶飞机的Gimbal系统提议了一个基于CV的新跟踪和聚合算法,主要贡献如下:a) 一个轻量的Resnet-18主干网络模型从头开始训练,并部署在Jetson Nano平台上,将图像分为二元部分(地面和天空)。b) 3D的天线和地面平面飞机的几何原始原始跟踪,以及IMU的定向估计,可以提供多种定向猜测。 c)主要贡献如下:a)一个轻量的Resnet -18主网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络网络模型模型测试系统,从地面上对地面进行测测测测测测定的系统,从地面系统测测测测测测测的地面系统,从地面系统测到地面系统测到地面测。