Vision-based system for a real-time detection and following of UAV

A. Barišić, Marko Car, S. Bogdan
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引用次数: 16

Abstract

In this paper a vision-based system for detection, motion tracking and following of Unmanned Aerial Vehicle (UAV) with other UAV (follower) is presented. For detection of an airborne UAV we apply a convolutional neural network YOLO trained on a collected and processed dataset of 10,000 images. The trained network is capable of detecting various multirotor UAVs in indoor, outdoor and simulation environments. Furthermore, detection results are improved with Kalman filter which ensures steady and reliable information about position and velocity of a target UAV. Preserving the target UAV in the field of view (FOV) and at required distance is accomplished by a simple nonlinear controller based on visual servoing strategy. The proposed system achieves a real-time performance on Neural Compute Stick 2 with a speed of 20 frames per second (FPS) for the detection of an UAV. Justification and efficiency of the developed vision-based system are confirmed in Gazebo simulation experiment where the target UAV is executing a 3D trajectory in a shape of number eight.
基于视觉的无人机实时检测与跟踪系统
提出了一种基于视觉的无人机(UAV)与其他无人机(follower)的检测、运动跟踪和跟随系统。为了检测机载无人机,我们使用了一个卷积神经网络YOLO,该网络是在收集和处理的10,000张图像数据集上训练的。训练后的网络能够在室内、室外和仿真环境下检测各种多旋翼无人机。利用卡尔曼滤波对检测结果进行改进,保证了目标无人机的位置和速度信息稳定可靠。通过一种基于视觉伺服策略的简单非线性控制器,实现了目标无人机在视场内和所需距离的保持。该系统在神经计算棒2上以每秒20帧(FPS)的速度实现了对无人机的实时检测。在Gazebo仿真实验中,目标无人机以8号形状执行三维轨迹,验证了所开发的基于视觉的系统的合理性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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