Multimedia Imaging System of Data Collection and Antenna Alignment for Unmanned Aerial Vehicles Based Internet of Things

Maysaloon Abed Qasim, Qusay Abboodi Ali, N. M. Sahab, R. A. Jaleel, M. M. A. Zahra
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Abstract

Because network of sensors gives a more accurate representation of remotely sensed environments, a network of wirelessly connected sensors is essential. Data packets must be routed to the base station hop by hop, which causes conventional network data collecting to use a lot of power. Unmanned aerial vehicles (UAV) were employed for hovering over the detected environment and gather data to solve this issue. The paper also aims to provide an automatic alignment for UAV antennas for tracking by utilising computer vision technologies. A directional antenna with high gain is used by a ground station that can operate by a pan-tilt to point towards the low-gain omnidirectional antenna carried by the UAV. To center the UAV's antenna's image in the frame, the antenna is equipped with a camera, and a computer detects the video and controls the pan-tilt. The antennas are aligned if there are no more than a few pixels between the UAV image center and the image center. The proposed imaging system exhibits fast data collection, thus attaining a high packet delivery rate and the minimum use of energy. With the suggested antenna auto-alignment approach, the antennas can be accurately aligned with an angle error of under one. UAVs must take the smoothest and shortest pathways possible to accommodate their motion and time constraints. As a result, the Traveling Sales Problem (TSP) is utilized to determine the shortest route, and Bezier curves are then employed to turn paths into a flyable path.
基于物联网的无人机数据采集与天线对准多媒体成像系统
由于传感器网络可以更准确地表示遥感环境,因此无线连接传感器网络是必不可少的。数据包必须一跳一跳地路由到基站,这使得传统的网络数据采集消耗了大量的电力。为了解决这一问题,采用无人机在被探测环境上空悬停并收集数据。本文还旨在利用计算机视觉技术为无人机天线跟踪提供自动对准。具有高增益的定向天线被地面站使用,能够通过一个泛倾斜操作指向由无人机携带的低增益全向天线。为了将无人机天线的图像集中在框架中,天线配备了一个摄像头,计算机检测视频并控制平移倾斜。如果无人机图像中心和图像中心之间不超过几个像素,则天线对齐。该成像系统具有数据采集速度快、数据包传输速率高、能耗低的特点。采用本文提出的天线自动对准方法,可以在角度误差小于1的情况下实现天线的精确对准。无人机必须采取最平稳和最短的路径,以适应其运动和时间限制。因此,利用旅行销售问题(TSP)确定最短路线,然后利用贝塞尔曲线将路径转化为可飞路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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