无人机视觉和基础设施检测的深度学习

I. Pitas
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引用次数: 2

摘要

本讲座概述了无人机用于基础设施检查和维护的使用。各种类型的检查,例如,使用视觉摄像机,激光雷达或热像仪进行审查。无人机视觉在基础设施检查和维护的无人机感知/控制中发挥着关键作用,因为:a)它通过无人机定位/绘图、障碍物检测和紧急着陆检测来提高飞行安全;B)执行高质量的视觉数据采集,c)允许强大的无人机/人类交互,例如,通过自动事件检测和手势控制。无人机应具有:a)增加多架无人机的决策自主权和b)改进多架无人机的鲁棒性和安全机制(例如,通信鲁棒性/安全性、嵌入式飞行法规遵从性、增强的人群规避和紧急着陆机制)。因此,它必须具有上下文意识和适应性。无人机视觉和机器学习在这方面发挥着非常重要的作用,包括以下主题:a)语义世界映射b)无人机和目标定位,c)目标/障碍物/人群/兴趣点检测的无人机视觉分析,d) 2D/3D目标跟踪。最后,嵌入式无人机视觉(例如,跟踪)和机器学习算法非常重要,因为它们促进了无人机的自主性,例如,在通信拒绝的环境中。主要应用领域为电线检测。检查线路检测和跟踪以及无人机栖息。概述了人类行为识别和协同工作协助。讲座将提供:a)概述上述所有内容以及其他相关主题,并将强调相关算法方面,例如:b)无人机定位和世界地图,c)目标检测d)目标跟踪和3D定位e)手势控制和与人类合作。本文还概述了嵌入式CNN和快速卷积计算的一些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drone Vision and Deep Learning for Infrastructure Inspection
This lecture overviews the use of drones for infrastructure inspection and maintenance. Various types of inspection, e.g., using visual cameras, LIDAR or thermal cameras are reviewed. Drone vision plays a pivotal role in drone perception/control for infrastructure inspection and maintenance, because: a) it enhances flight safety by drone localization/mapping, obstacle detection and emergency landing detection; b) performs quality visual data acquisition, and c) allows powerful drone/human interactions, e.g., through automatic event detection and gesture control. The drone should have: a) increased multiple drone decisional autonomy and b) improved multiple drone robustness and safety mechanisms (e.g., communication robustness/safety, embedded flight regulation compliance, enhanced crowd avoidance and emergency landing mechanisms). Therefore, it must be contextually aware and adaptive. Drone vision and machine learning play a very important role towards this end, covering the following topics: a) semantic world mapping b) drone and target localization, c) drone visual analysis for target/obstacle/crowd/point of interest detection, d) 2D/3D target tracking. Finally, embedded on-drone vision (e.g., tracking) and machine learning algorithms are extremely important, as they facilitate drone autonomy, e.g., in communication-denied environments. Primary application area is electric line inspection. Line detection and tracking and drone perching are examined. Human action recognition and co-working assistance are overviewed.The lecture will offer: a) an overview of all the above plus other related topics and will stress the related algorithmic aspects, such as: b) drone localization and world mapping, c) target detection d) target tracking and 3D localization e) gesture control and co-working with humans. Some issues on embedded CNN and fast convolution computing will be overviewed as well.
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