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Deep visual gravity vector detection for unmanned aircraft attitude estimation

机译:深度视觉重力矢量检测用于无人机姿态估计

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This paper demonstrates a feasible method for using a deep neural network as a sensor to estimate the attitude of a flying vehicle using only flight video. A dataset of still images and associated gravity vectors was collected and used to perform supervised learning. The network builds on a previously trained network and was trained to be able to approximate the attitude of the camera with an average error of about 8 degrees. Flight test video was recorded and processed with a relatively simple visual odometry method. The aircraft attitude is then estimated with the visual odometry as the state propagation and network providing the attitude measurement in an extended Kalman filter. Results show that the proposed method of having the neural network provide a gravity vector attitude measurement from the flight imagery reduces the standard deviation of the attitude error by approximately 12 times compared to a baseline approach.
机译:本文演示了一种使用深度神经网络作为传感器来仅通过飞行视频估算飞行器姿态的可行方法。收集了静止图像和相关重力矢量的数据集,并用于执行监督学习。该网络建立在先前训练的网络上,并经过训练能够以大约8度的平均误差近似摄像机的姿态。记录了飞行测试视频,并使用相对简单的视觉测距法进行了处理。然后使用视觉里程计估算飞机的姿态,作为状态传播和网络,在扩展的卡尔曼滤波器中提供姿态测量。结果表明,与基线方法相比,所提出的使神经网络从飞行图像提供重力矢量姿态测量值的方法将姿态误差的标准偏差降低了约12倍。

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