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Vehicle Detection in Aerial Images Based on 3D Depth Maps and Deep Neural Networks

机译:基于3D深度图和深神经网络的航空图像中的车辆检测

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Object detection in aerial images, particularly of vehicles, is highly important in remote sensing applications including traffic management, urban planning, parking space utilization, surveillance, and search and rescue. In this article, we investigate the ability of three-dimensional (3D) feature maps to improve the performance of deep neural network (DNN) for vehicle detection. First, we propose a DNN based on YOLOv3 with various base networks, including DarkNet-53, SqueezeNet, MobileNet-v2, and DenseNet-201. We assessed the base networks and their performance in combination with YOLOv3 on efficiency, processing time, and the memory that each architecture required. In the second part, 3D depth maps were generated using pairs of aerial images and their parallax displacement. Next, a fully connected neural network (fcNN) was trained on 3D feature maps of trucks, semi-trailers and trailers. A cascade of these networks was then proposed to detect vehicles in aerial images. Upon the DNN detecting a region, coordinates and confidence levels were used to extract the corresponding 3D features. The fcNN used 3D features as the input to improve the DNN performance. The data set used in this work was acquired from numerous flights of an unmanned aerial vehicle (UAV) across two industrial harbors over two years. The experimental results show that 3D features improved the precision of DNNs from 88.23 % to 96.43 % and from 97.10 % to 100 % when using DNN confidence thresholds of 0.01 and 0.05, respectively. Accordingly, the proposed system was able to successfully remove 72.22 % to 100 % of false positives from the DNN outputs. These results indicate the importance of 3D features utilization to improve object detection in aerial images for future research.
机译:在空中图像中的对象检测,尤其是车辆,在遥感应用中非常重要,包括交通管理,城市规划,停车空间利用,监控和搜救。在本文中,我们调查了三维(3D)特征图以提高车辆检测的深神经网络(DNN)性能的能力。首先,我们提出基于YOLOV3的DNN,其中包括Darknet-53,Screezenet,MobileNet-V2和Densenet-201。我们将基础网络及其表现与Yolov3的效率,处理时间和每个架构所需的内存结合使用。在第二部分中,使用一对空中图像及其视差位移产生3D深度图。接下来,在3D特征图的卡车,半拖车和拖车的特征图培训完全连接的神经网络(FCNN)。然后提出这些网络的级联来检测航空图像中的车辆。在检测到区域的DNN上,使用坐标和置信水平来提取相应的3D特征。 FCNN使用3D功能作为提高DNN性能的输入。这项工作中使用的数据集是在两年内从两个工业港口的无人航空公司(UAV)的众多航班中获取。实验结果表明,当使用0.01和0.05的DNN置信阈值时,3D特征将DNN的精度从88.23%到96.43%和97.10%到100%提高。因此,所提出的系统能够从DNN输出成功地移除72.22%至100%的误报。这些结果表明3D特征利用的重要性,以改善空中图像中的对象检测以备将来的研究。

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