利用RGB和热数据降低无人机室外监视目标检测的不确定性

Juan Sandino, P. Caccetta, Conrad Sanderson, F. Maire, Felipe Gonzalez
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引用次数: 0

摘要

无人机(uav)的最新进展使其迅速被广泛的民用应用所采用,包括精准农业、生物安全、灾害监测和监视。无人机提供了具有灵活硬件配置的低成本平台,以及越来越多的自主能力,包括起飞、着陆、目标跟踪和避障。然而,很少有人关注无人机如何处理由基于视觉的探测器的错误读数、数据噪声、振动和遮挡引起的目标检测不确定性。在大多数情况下,这些检测的相关性和理解都委托给了人类操作员,因为许多无人机的认知能力有限,无法自主地与环境交互。本文提出了一种基于概率运动规划器的小型无人机在室外不确定场景下自主导航框架。该框架是评估与实际飞行试验使用一个2公斤以下的四旋翼无人机,并说明了受害者寻找搜索和救援(SAR)案例研究在森林/丛林。利用部分可观察马尔可夫决策过程(POMDP)对导航问题进行建模,并利用增强信念树(ABT)和TAPIR工具包在小型无人机上实时解决导航问题。使用彩色和热成像的实验结果表明,所提出的运动规划器提供准确的受害者定位坐标,因为无人机具有与环境交互的灵活性,并且与基线运动规划器相比,获得任何潜在受害者的更清晰的可视化。结合该系统可以通过减少基于视觉的目标探测器的误报读数来优化无人机监视操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Object Detection Uncertainty from RGB and Thermal Data for UAV Outdoor Surveillance
Recent advances in Unmanned Aerial Vehicles (UAVs) have resulted in their quick adoption for wide a range of civilian applications, including precision agriculture, biosecurity, disaster monitoring and surveillance. UAVs offer low-cost platforms with flexible hardware configurations, as well as an increasing number of autonomous capabilities, including take-off, landing, object tracking and obstacle avoidance. However, little attention has been paid to how UAVs deal with object detection uncertainties caused by false readings from vision-based detectors, data noise, vibrations, and occlusion. In most situations, the relevance and understanding of these detections are delegated to human operators, as many UAVs have limited cognition power to interact autonomously with the environment. This paper presents a framework for autonomous navigation under uncertainty in outdoor scenarios for small UAVs using a probabilistic-based motion planner. The framework is evaluated with real flight tests using a sub 2 kg quadrotor UAV and illustrated in victim finding Search and Rescue (SAR) case study in a forest/bushland. The navigation problem is modelled using a Partially Observable Markov Decision Process (POMDP), and solved in real time onboard the small UAV using Augmented Belief Trees (ABT) and the TAPIR toolkit. Results from experiments using colour and thermal imagery show that the proposed motion planner provides accurate victim localisation coordinates, as the UAV has the flexibility to interact with the environment and obtain clearer visualisations of any potential victims compared to the baseline motion planner. Incorporating this system allows optimised UAV surveillance operations by diminishing false positive readings from vision-based object detectors.
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