UAV Aerial Survey and Communication

S. Samanth, K. Prema, Mamatha Balachandra
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Abstract

Over the past several decades, Unmanned Aerial Vehicles (UAVs) have been used in a variety of applications with 2 basic classifications of UAVs’ a scivilian and military drones. Drones capture a variety of multimedia data. Among the multimedia data, images with overlapping regions need to be stitched to generate a panorama which would provide image data of ‘n’ number of images captured by a drone. The data captured by drones should be effectively communicated to a Ground Control Station (GCS). Hence in the research, 4 drones capture both text data and images. Each drone generates a corresponding panorama for the set of images captured by it and communicates both its text data and panorama to the GCS. 2 desktops are used for performing the experiments using client-server communication. Client desktop is used for performing simulations using AirSim simulator (which consists of 4 drones) on the Unreal Engine 4.25 platform, and generate panoramas for the set of images captured by each drone. Server desktop acting as GCS is used to accumulate text data and image data from 4 drones. Image stitching analysis has been done using 2 Python versions and Open CV versions, and 2 AirSim environments. Image stitching results were more effective with the use of Python version 3.7.1 and Open CV version 3.4.2 pair (image stitching success rate, and image stitching accuracy = 100%) when compared to that with Python version 3.9.1 and Open CV version 4.5.2 pair (image stitching success rate = 75%, image stitching accuracy = 33.33%). Both the text data and panoramas from 4 drones were successfully transmitted to the GCS.
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无人机航测与通信
在过去的几十年里,无人驾驶飞行器(uav)已经被用于各种各样的应用,无人机有民用和军用无人机两种基本分类。无人机捕捉各种多媒体数据。在多媒体数据中,需要拼接有重叠区域的图像生成全景图,该全景图将提供无人机捕获的“n”张图像的图像数据。无人机捕获的数据应该有效地传达给地面控制站(GCS)。因此,在研究中,4架无人机捕获文本数据和图像。每架无人机都会为其捕获的图像集生成相应的全景图,并将其文本数据和全景图传递给GCS。2台桌面使用客户端-服务器通信进行实验。客户端桌面用于在虚幻引擎4.25平台上使用AirSim模拟器(由4架无人机组成)进行模拟,并为每架无人机捕获的一组图像生成全景图。服务器桌面作为GCS,对4架无人机的文本数据和图像数据进行累积。图像拼接分析使用了2个Python版本和Open CV版本,以及2个AirSim环境。与Python 3.9.1和Open CV 4.5.2对(图像拼接成功率为75%,图像拼接准确率为33.33%)相比,使用Python 3.7.1和Open CV 3.4.2对(图像拼接成功率为75%,图像拼接准确率为100%)的图像拼接效果更好。4架无人机的文本数据和全景图均成功传输到GCS。
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