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    面向低空安全的约束驱动无人机具身任务执行

    Constraint-driven Embodied Task Execution for Unmanned Aerial Vehicles Towards Low-altitude Safety Applications

    • 摘要: 为了实现无人机在低空任务中对实时感知障碍物的安全规避,提出一种基于可微分控制障碍函数的约束驱动端到端安全控制框架。以无人机实时获取的图像等感知信息为输入,利用神经网络学习安全约束与任务约束的松弛程度参数,将其嵌入可微分二次规划生成控制量,推导给出了反向传播的损失函数梯度下降公式。在AirSim平台中构建了仿真场景,并给出了从训练数据集构建到模型测试部署的流程。结果表明,提出方法可在障碍物位置未知的情况下,基于深度图像等感知数据端到端生成控制量,相比于基于全连接网络对控制量进行预测的方法实现了更优的任务执行成功率。

       

      Abstract: To realize safe obstacle avoidance for unmanned aerial vehicles (UAVs) during low-altitude missions based on real-time obstacle perception, a constraint-driven end-to-end safe control framework is proposed based on a differentiable control barrier function. The method takes real-time sensing data, such as images acquired by the UAV, as input, utilizes neural networks to learn the relaxation parameters of safety constraints and mission constraints, and embeds them into a differentiable quadratic programming to generate control volumes. The gradient descent formula of the loss function for backpropagation is derived. A simulation scenario is constructed on the Airsim platform , and a process from training dataset construction to model testing and deployment is provided. The results show that the proposed method can generate control volumes end-to-end based on such perception data as depth images, etc. even when obstacle positions are unknown, achieving better optimal task success rates compared with those of fully connected network-based control prediction methods.

       

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