Autonomous flight insurance method of unmanned aerial vehicles Parot Mambo using semantic segmentation data

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2023-03-07 DOI:10.32620/reks.2023.1.12
D. Naso, Olha Pohudina, Andrii Pohudin, Sergiy Yashin, R. Bartolo
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Abstract

Autonomous navigation of unmanned aerial vehicles (UAVs) has become in the past decade an extremely attracting topic, also due to the increasing availability of affordable equipment and open-source control and processing software environments. This demand has also raised a strong interest in developing accessible experimental platforms to train engineering students in the rapidly evolving area of autonomous navigation. In this paper, we describe a platform based on low-cost off-the-shelf hardware that takes advantage of the Matlab/Simulink programming environment to tackle most of the problems related to UAV autonomous navigation. More specifically, the subject of this paper is the autonomous control of the flight of a small UAV, which must explore and patrol an indoor unknown environment. Objectives: to analyse the existing hardware platforms for autonomous flight indoors, choose a flight exploration scenario of unknown premises, to formalize the procedure for obtaining a model of knowledge for semantic classification of premises, to formalize obtaining distance to obstacles using data camera horizontally employment and building on its barrier map. Namely, we use the method of image segmentation based on the brightness threshold, a method of training the semantic segmentation network, and computer algorithms in probabilistic robotics for mobile robots. We consider both the case of navigation guided by structural visual information placed in the environment, e.g., contrast markers for flight (such as path marked by a red tape), and the case of navigation based on unstructured information such as recognizable objects or human gestures. Basing on preliminary tests, the most suitable method for autonomous in-door navigation is by using\ object classification and segmentation, so that the UAV gradually analyses the surrounding objects in the room and makes decisions on path planning. The result of our investigation is a method that is suitable to allow the autonomous flight of a UAV with a frontal video camera. Conclusions. The scientific novelty of the obtained results is as follows: we have improved the method of autonomous flight of small UAVs by using the semantic network model and determining the purpose of flight only at a given altitude to minimize the computational costs of limited autopilot capabilities for low-cost small UAV models. The results of our study can be further extended by means of a campaign of experiments in different environments.
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基于语义分割数据的无人机自主飞行保险方法
在过去的十年里,无人机的自主导航已经成为一个极具吸引力的话题,这也是由于越来越多的廉价设备以及开源控制和处理软件环境的可用性。这一需求也引起了人们对开发可访问的实验平台的强烈兴趣,以在快速发展的自主导航领域培训工程学生。在本文中,我们描述了一个基于低成本现成硬件的平台,该平台利用Matlab/Simulink编程环境来解决与无人机自主导航相关的大多数问题。更具体地说,本文的主题是小型无人机的飞行自主控制,它必须在室内未知环境中进行探索和巡逻。目的:分析现有的室内自主飞行硬件平台,选择未知前提的飞行探索场景,形式化获取前提语义分类知识模型的过程,使用数据相机水平使用并建立在其障碍地图上,形式化获得障碍物距离。即,我们在移动机器人的概率机器人中使用了基于亮度阈值的图像分割方法、语义分割网络的训练方法和计算机算法。我们既考虑了由放置在环境中的结构视觉信息引导的导航情况,例如飞行的对比度标记(例如由繁文缛节标记的路径),也考虑了基于可识别物体或人类手势等非结构化信息的导航情况。根据初步测试,最适合自主门内导航的方法是使用对象分类和分割,以便无人机逐渐分析房间内的周围对象,并做出路径规划决策。我们的研究结果是一种适合于使用正面摄像机实现无人机自主飞行的方法。结论。所获得结果的科学新颖性如下:我们改进了小型无人机的自主飞行方法,通过使用语义网络模型,确定仅在给定高度飞行的目的,以最大限度地降低低成本小型无人机模型的有限自动驾驶能力的计算成本。我们的研究结果可以通过在不同环境中进行一系列实验来进一步扩展。
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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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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