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Autonomous drone hunter operating by deep learning and all-onboard computations in GPS-denied environments

机译:通过深入学习和GPS拒绝环境中的全舷内计算运营的自主无人机猎人

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This paper proposes a UAV platform that autonomously detects, hunts, and takes down other small UAVs in GPS-denied environments. The platform detects, tracks, and follows another drone within its sensor range using a pre-trained machine learning model. We collect and generate a 58,647-image dataset and use it to train a Tiny YOLO detection algorithm. This algorithm combined with a simple visual-servoing approach was validated on a physical platform. Our platform was able to successfully track and follow a target drone at an estimated speed of 1.5 m/s. Performance was limited by the detection algorithm’s 77% accuracy in cluttered environments and the frame rate of eight frames per second along with the field of view of the camera.
机译:本文提出了一个自主检测,狩猎,并在GPS拒绝环境中取下其他小无人机的UAV平台。 平台使用预先训练的机器学习模型检测到其传感器范围内的另一个无人机。 我们收集并生成58,647图像数据集,并使用它来培训微小的yolo检测算法。 该算法与简单的视觉伺服方法相结合,在物理平台上验证。 我们的平台能够以1.5米/秒的估计速度成功跟踪并遵循目标无人机。 性能受到检测算法在杂乱环境中的77%的77%精度和每秒八个框架的帧速率以及相机视野。

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