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Flying through Gates using a Behavioral Cloning Approach

机译:使用行为克隆方法飞过盖茨

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Drone racing presents a challenge to autonomous micro aerial vehicles (MAV) because usually the track is not known in advance and it is affected by the environment light. In such scenarios, the vehicle has to act quickly depending on the information provided by its sensors. In this work, we want to predict the movement of the drone so that it passes through a gate. Unlike previous approaches where the task is decomposed into perception, estimation, planning, and control, we are proposing a behavioral cloning approach. In this method, a convolutional neural network is trained with the flights of a human operator. So that the output of the trained network is directly the desired MAV state so that it leads the drone through the gate. We have tested the method using a validation set where we obtained a low loss. Furthermore, we have tested the trained network with unseen data obtaining promising results.
机译:无人机赛车对自主微鸟车(MAV)提出了挑战,因为通常轨道预先知道,并且它受到环境光的影响。在这种情况下,车辆必须根据其传感器提供的信息快速行动。在这项工作中,我们希望预测无人机的运动,使其通过大门。与以前的方法不同,任务被分解为感知,估计,规划和控制,我们提出了一种行为克隆方法。在这种方法中,卷积神经网络与人类操作员的飞行训练。因此,训练网络的输出直接是所需的MAV状态,使其通过门引导无人机。我们使用我们获得低损失的验证集进行了测试方法。此外,我们已经测试了训练有素的网络,并获得了取得有希望的结果。

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