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EKF-based self-attitude estimation with DNN learning landscape information

机译:基于EKF的自我姿态估计与DNN学习景观信息

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This paper presents an EKF-based self-attitude estimation with a DNN (deep neural network) learning landscape information. The method integrates gyroscopic angular velocity and DNN inference in the EKF. The DNN predicts a gravity vector in a camera frame. The input of the network is a camera image, the outputs are a mean vector and a covariance matrix of the gravity. It is trained and validated with a dataset of images and corresponded gravity vectors. The dataset is collected in a flight simulator because we can easily obtain various gravity vectors, although the method is not only for UAVs. Using a simulator breaks the limitation of amount of collecting data with ground truth. The validation shows the network can predict the gravity vector from only a single shot image. It also shows that the covariance matrix expresses the uncertainty of the inference. The covariance matrix is used for integrating the inference in the EKF. Flight data of a drone is also recorded in the simulator, and the EKF-based method is tested with it. It shows the method suppresses accumulative error by integrating the network outputs.
机译:本文提出了一种基于EKF的自我姿态估计,具有DNN(深神经网络)学习景观信息。该方法在EKF中集成了陀螺角速度和DNN推断。 DNN预测相机框架中的重力矢量。网络的输入是相机图像,输出是平均矢量和重力的协方差矩阵。使用图像数据集和相应的重力向量验证并验证。该数据集在飞行模拟器中收集,因为我们可以轻松获得各种重力矢量,尽管该方法不仅适用于无人机。使用模拟器将收集数据的限制与地面真相中断。验证显示网络可以仅从单个拍摄图像预测重力矢量。它还表明协方差矩阵表达了推理的不确定性。协方差矩阵用于集成在EKF中的推断。无人机的飞行数据也被记录在模拟器中,并用其测试基于EKF的方法。它显示该方法通过集成网络输出来抑制累积误差。

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