基于改进更快R-CNN的无人机图像车辆检测

Lixin Wang, Junguo Liao, Chaoqian Xu
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引用次数: 18

摘要

随着车辆数量的增加,交通管理对车辆监控提出了更高的要求,基于无人机图像的车辆检测技术受到越来越多的关注。首先,我们构建了一个新的600幅无人机图像的车辆检测数据集,以解决现实世界中的车辆检测任务。其次,针对车辆检测中存在的误检和漏检问题,利用ResNet和构造特征金字塔网络(Feature Pyramid Networks, FPN)提取图像特征,对Faster R-CNN进行改进;最后,基于车辆检测数据集,改进的Faster R-CNN可用于车辆目标检测。实验结果表明,改进后的方法准确率为96.83%,比原来的Faster R-CNN方法提高了3.86%。
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Vehicle Detection Based on Drone Images with the Improved Faster R-CNN
With the increasing number of vehicles, traffic management has put forward higher requirements for vehicle monitoring, thus the technology of vehicle detection based on drone images has received increasing attention. Firstly, we construct a new vehicle detection data set of 600 drone images so that to solve the vehicle detection tasks in real world. Secondly, aiming at the problem of false detection and missed detection in vehicle detection, the Faster R-CNN is improved by using ResNet and constructing Feature Pyramid Networks (FPN) to extract the image features. Finally, based on the vehicle detection data set, the improved Faster R-CNN can be used to detect vehicle targets. The experiment results show that the accuracy of improved method is 96.83%, which is 3.86% higher than that of the original Faster R-CNN method.
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