Uncrewed aerial vehicles (UAVs) performing tasks such as transportation and aerial photography are vulnerable to intentional projectile attacks from humans. Dodging such a sudden and fast projectile poses a significant challenge for UAVs, requiring ultra-low latency responses and agile maneuvers. Drawing inspiration from baseball, in which pitchers' body movements are analyzed to predict the ball's trajectory, we propose a novel real-time dodging system that leverages an RGB-D camera. Our approach integrates human pose estimation with depth information to predict the attacker's motion trajectory and the subsequent projectile trajectory. Additionally, we introduce an uncertainty-aware dodging strategy to enable the UAV to dodge incoming projectiles efficiently. Our perception system achieves high prediction accuracy and outperforms the baseline in effective distance and latency. The dodging strategy addresses temporal and spatial uncertainties to ensure UAV safety. Extensive real-world experiments demonstrate the framework's reliable dodging capabilities against sudden attacks and its outstanding robustness across diverse scenarios.
翻译:执行运输和航拍等任务的无人驾驶飞行器(UAV)易受人类蓄意抛射物攻击。躲避此类突发且高速的抛射物对无人机构成重大挑战,需要超低延迟响应和敏捷机动能力。受棒球运动中通过分析投手身体动作预测球体轨迹的启发,我们提出了一种利用RGB-D相机的新型实时躲避系统。该方法融合人体姿态估计与深度信息,以预测攻击者的运动轨迹及后续抛射物轨迹。此外,我们引入一种不确定性感知躲避策略,使无人机能高效规避来袭抛射物。我们的感知系统实现了高预测精度,在有效距离和延迟方面优于基线方法。该躲避策略通过处理时空不确定性来确保无人机安全。大量真实环境实验表明,该框架在面对突发攻击时具有可靠的躲避能力,并在多样化场景中展现出卓越的鲁棒性。