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基于区域卷积神经网络和难负样本挖掘的航空图像车辆检测

Vehicle Detection in Aerial Images Based on Region Convolutional Neural Networks and Hard Negative Example Mining.

作者信息

Tang Tianyu, Zhou Shilin, Deng Zhipeng, Zou Huanxin, Lei Lin

机构信息

College of Electronic Science and Engineering, National University of Defense Technology, Changsha 410073, China.

出版信息

Sensors (Basel). 2017 Feb 10;17(2):336. doi: 10.3390/s17020336.

Abstract

Detecting vehicles in aerial imagery plays an important role in a wide range of applications. The current vehicle detection methods are mostly based on sliding-window search and handcrafted or shallow-learning-based features, having limited description capability and heavy computational costs. Recently, due to the powerful feature representations, region convolutional neural networks (CNN) based detection methods have achieved state-of-the-art performance in computer vision, especially Faster R-CNN. However, directly using it for vehicle detection in aerial images has many limitations: (1) region proposal network (RPN) in Faster R-CNN has poor performance for accurately locating small-sized vehicles, due to the relatively coarse feature maps; and (2) the classifier after RPN cannot distinguish vehicles and complex backgrounds well. In this study, an improved detection method based on Faster R-CNN is proposed in order to accomplish the two challenges mentioned above. Firstly, to improve the recall, we employ a hyper region proposal network (HRPN) to extract vehicle-like targets with a combination of hierarchical feature maps. Then, we replace the classifier after RPN by a cascade of boosted classifiers to verify the candidate regions, aiming at reducing false detection by negative example mining. We evaluate our method on the Munich vehicle dataset and the collected vehicle dataset, with improvements in accuracy and robustness compared to existing methods.

摘要

在空中图像中检测车辆在广泛的应用中起着重要作用。当前的车辆检测方法大多基于滑动窗口搜索以及手工制作或基于浅层学习的特征,其描述能力有限且计算成本高昂。近年来,由于强大的特征表示能力,基于区域卷积神经网络(CNN)的检测方法在计算机视觉领域取得了最先进的性能,尤其是更快区域卷积神经网络(Faster R-CNN)。然而,直接将其用于航空图像中的车辆检测存在许多局限性:(1)由于特征图相对粗糙,Faster R-CNN中的区域提议网络(RPN)在精确定位小型车辆方面性能较差;(2)RPN之后的分类器不能很好地区分车辆和复杂背景。在本研究中,为了应对上述两个挑战,提出了一种基于Faster R-CNN的改进检测方法。首先,为了提高召回率,我们采用超区域提议网络(HRPN)结合分层特征图来提取类似车辆的目标。然后,我们用级联增强分类器替换RPN之后的分类器,以验证候选区域,旨在通过挖掘负例来减少误检。我们在慕尼黑车辆数据集和收集的车辆数据集上评估了我们的方法,与现有方法相比,在准确性和鲁棒性方面都有提升。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/feaf/5335960/fa934c6c494a/sensors-17-00336-g001.jpg

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