论文标题

联合SRVDNET:联合超级分辨率和车辆检测网络

Joint-SRVDNet: Joint Super Resolution and Vehicle Detection Network

论文作者

Mostofa, Moktari, Ferdous, Syeda Nyma, Riggan, Benjamin S., Nasrabadi, Nasser M.

论文摘要

在许多国内和军事应用中,空中车辆的检测和超级分辨率经常是独立开发和应用的。但是,由于超级分辨图像中缺乏歧视性信息,超级分辨图像上的航空车辆检测仍然是一项艰巨的任务。为了解决这个问题,我们提出了一个联合超分辨率和车辆检测网(联合SRVDNET),该网络试图生成从洛(Stlow-Low-Low-Low-Low-Low-Low-Low)空中图像的车辆的歧视性高分辨率图像。首先,使用多尺寸的对抗网络(MSGAN),空中图像由4倍的倍倍缩放,该网络具有多个中间输出,并增加了差异。其次,对检测器进行了对超级分辨图像的训练,这些图像通过使用因子4 X使用sman架构进行了训练,最后,与超分辨率损失toencirage联合将检测损失最小化,目标探测器对随后的超分辨率训练敏感。网络共同研究目标的分层和判别特征,并产生最佳的超分辨率结果。 Weperform在VEDAI,XVIEW和DOTADATASET上提出的网络的定量和定性评估。实验结果表明,我们提出的框架比以前的超级分辨率具有4倍提高因子,并提高了赛车检测的准确性。

In many domestic and military applications, aerial vehicle detection and super-resolutionalgorithms are frequently developed and applied independently. However, aerial vehicle detection on super-resolved images remains a challenging task due to the lack of discriminative information in the super-resolved images. To address this problem, we propose a Joint Super-Resolution and Vehicle DetectionNetwork (Joint-SRVDNet) that tries to generate discriminative, high-resolution images of vehicles fromlow-resolution aerial images. First, aerial images are up-scaled by a factor of 4x using a Multi-scaleGenerative Adversarial Network (MsGAN), which has multiple intermediate outputs with increasingresolutions. Second, a detector is trained on super-resolved images that are upscaled by factor 4x usingMsGAN architecture and finally, the detection loss is minimized jointly with the super-resolution loss toencourage the target detector to be sensitive to the subsequent super-resolution training. The network jointlylearns hierarchical and discriminative features of targets and produces optimal super-resolution results. Weperform both quantitative and qualitative evaluation of our proposed network on VEDAI, xView and DOTAdatasets. The experimental results show that our proposed framework achieves better visual quality than thestate-of-the-art methods for aerial super-resolution with 4x up-scaling factor and improves the accuracy ofaerial vehicle detection.

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