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A Machine Learning Method for Vision-Based Unmanned Aerial Vehicle Systems to Understand Unknown Environments

机译:基于视觉的无人机系统了解未知环境的机器学习方法

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摘要

What makes unmanned aerial vehicles (UAVs) intelligent is their capability of sensing and understanding new unknown environments. Some studies utilize computer vision algorithms like Visual Simultaneous Localization and Mapping (VSLAM) and Visual Odometry (VO) to sense the environment for pose estimation, obstacles avoidance and visual servoing. However, understanding the new environment (i.e., make the UAV recognize generic objects) is still an essential scientific problem that lacks a solution. Therefore, this paper takes a step to understand the items in an unknown environment. The aim of this research is to enable the UAV with basic understanding capability for a high-level UAV flock application in the future. Specially, firstly, the proposed understanding method combines machine learning and traditional algorithm to understand the unknown environment through RGB images; secondly, the You Only Look Once (YOLO) object detection system is integrated (based on TensorFlow) in a smartphone to perceive the position and category of 80 classes of objects in the images; thirdly, the method makes the UAV more intelligent and liberates the operator from labor; fourthly, detection accuracy and latency in working condition are quantitatively evaluated, and properties of generality (can be used in various platforms), transportability (easily deployed from one platform to another) and scalability (easily updated and maintained) for UAV flocks are qualitatively discussed. The experiments suggest that the method has enough accuracy to recognize various objects with high computational speed, and excellent properties of generality, transportability and scalability.
机译:使无人飞行器(UAV)变得智能的原因是其感知和理解新的未知环境的能力。一些研究利用计算机视觉算法(例如视觉同时定位和映射(VSLAM)和视觉测程(VO))来感知环境,以进行姿势估计,避障和视觉伺服。但是,了解新环境(即使无人机识别通用物体)仍然是缺少解决方案的基本科学问题。因此,本文采取步骤来了解未知环境中的项目。这项研究的目的是使无人机在未来的高级无人机群应用中具有基本的理解能力。具体来说,首先,提出的理解方法将机器学习与传统算法相结合,通过RGB图像来了解未知环境。其次,在智能手机中集成了“仅看一次”(YOLO)对象检测系统(基于TensorFlow),以感知图像中80类对象的位置和类别。第三,该方法使无人机更加智能,使操作员免于劳动。第四,定量评估了工作条件下的检测精度和潜伏期,并定性地讨论了无人机群的通用性(可用于各种平台),可移植性(易于从一个平台部署到另一个平台)和可扩展性(易于更新和维护)。 。实验表明,该方法具有足够的精度,能够以较高的计算速度识别各种对象,并且具有出色的通用性,可移植性和可伸缩性。

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