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Precise object detection using adversarially augmented local/global feature fusion

机译:使用普遍增强的本地/全局特征融合进行精确的物体检测

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Object detection, which aims at recognizing or locating the objects of interest in remote sensing imagery with high spatial resolutions (HSR), plays a significant role in many real-world scenarios, e.g., environment monitoring, urban planning, civil infrastructure construction, disaster rescuing, and geographic image retrieval. As a long-lasting challenging problem in both machine learning and geoinformatics communities, many approaches have been proposed to tackle it. However, previous methods always overlook the abundant information embedded in the HSR remote sensing images. The effectiveness of these methods, e.g., accuracy of detection, is therefore limited to some extent. To overcome the mentioned challenge, in this paper, we propose a novel two-phase deep framework, dubbed GLGOD-Net, to effectively detect meaningful objects in HSR images. GLGOD-Net firstly attempts to learn the enhanced deep representations from super-resolution image data. Fully utilizing the augmented image representations, GLGOD-Net then learns the fused representations into which both local and global latent features are implanted. Such fused representations learned by GLGOD-Net can be used to precisely detect different objects in remote sensing images. The proposed framework has been extensively tested on a real-world HSR image dataset for object detection and has been compared with several strong baselines. The remarkable experimental results validate the effectiveness of GLGOD-Net. The success of GLGOD-Net not only advances the cutting-edge of image data analytics, but also promotes the corresponding applicability of deep learning in remote sensing imagery.
机译:目标检测,旨在识别或定位具有高空间分辨率(HSR)的遥感图像中感兴趣的对象,在许多现实世界的情景中起着重要作用,例如环境监测,城市规划,民用基础设施,灾难救援和地理图像检索。作为机器学习和地理信息化社区的持久挑战性问题,已经提出了许多方法来解决它。但是,以前的方法始终忽略嵌入HSR遥感图像中的丰富信息。因此,这些方法的有效性,例如检测的准确性,因此在一定程度上限制。为了克服提到的挑战,在本文中,我们提出了一种新颖的两相深度框架,称为Glgod-net,以有效地检测HSR图像中的有意义物体。 GLGOD-NET首先尝试从超分辨率图像数据学习增强的深度表示。完全利用增强图像表示,GLGOD-NET然后了解植入本地和全局潜在特征的融合表示。由GLGOD-NET学习的这种融合表示可用于精确地检测遥感图像中的不同对象。所提出的框架已经在实际的HSR图像数据集上广泛测试了对象检测,并与几个强基线进行了比较。显着的实验结果验证了GLGOD-NET的有效性。 GLGOD-NET的成功不仅推进了图像数据分析的前沿,而且还促进了深度学习在遥感图像中的相应适用性。

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