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Identification of autonomous landing sign for unmanned aerial vehicle based on faster regions with convolutional neural network

机译:基于卷积神经网络的快速区域识别无人机自主着陆标志

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In order to realize autonomous landing of the unmanned aerial vehicle (UAV) in power patrolling, a visual method vision based on Faster Regions with Convolutional Neural Network (Faster R-CNN) for UAVs is studied. In this paper, we design the landing sign of the combination of concentric circles and pentagon, and propose the Faster R-CNN recognition algorithm which can be used to identify the target sign. Faster R-CNN successfully identifying the landing mark is the most important step for the UAV autonomous landing. Then, the estimation algorithm of position and direction based on vision is proposed. Position and direction for the UAV landing can be obtained based on least squares ellipse fitting and Shi-Tomasi corner detection method after the landing sign is effectively identified by Faster R-CNN. The experimental results show that it can achieve recognition speed of nearly 81 millisecond each frame and 97.8% accuracy by using Faster R-CNN for detection and identification. The proposed method has better identification accuracy compared with three target identification methods, the Support Vector Machine (SVM) classification, the Back Propagation (BP) neural network and You Only Look Once (YOLO) based on deep learning. The position and direction estimation error of the vision algorithm is within the allowable range, and it can meet the UAV real-time landing requirements.
机译:为了实现无人驾驶飞行器(UAV)在电力巡回中的自主降落,研究了基于卷积神经网络(更快R-CNN)的较快区域的视觉方法视觉。在本文中,我们设计了同心圆和五角大楼组合的着陆标志,并提出了更快的R-CNN识别算法,可用于识别目标标志。 R-CNN成功识别着陆标志是无人机自动着陆的最重要步骤。然后,提出了基于视觉的位置和方向的估计算法。通过更快的R-CNN有效地识别起来的降落标志之后,可以基于最小二乘椭圆拟合和Shi-Tomasi角检测方法获得UAV降落的位置和方向。实验结果表明,通过使用更快的R-CNN进行检测和识别,它可以实现近81毫秒的识别速度和97.8%的精度。该方法具有更好的识别精度与三个目标识别方法相比,支持向量机(SVM)分类,后传播(BP)神经网络,您只根据深度学习看一次(YOLO)。视觉算法的位置和方向估计误差在允许范围内,可以满足UAV实时着陆要求。

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