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Building Corner Detection in Aerial Images with Fully Convolutional Networks

机译:具有全卷积网络的航空影像中的建筑物角点检测

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摘要

In aerial images, corner points can be detected to describe the structural information of buildings for city modeling, geo-localization, and so on. For this specific vision task, the existing generic corner detectors perform poorly, as they are incapable of distinguishing corner points on buildings from those on other objects such as trees and shadows. Recently, fully convolutional networks (FCNs) have been developed for semantic image segmentation that are able to recognize a designated kind of object through a training process with a manually labeled dataset. Motivated by this achievement, an FCN-based approach is proposed in the present work to detect building corners in aerial images. First, a DeepLab model comprised of improved FCNs and fully-connected conditional random fields (CRFs) is trained end-to-end for building region segmentation. The segmentation is then further improved by using a morphological opening operation to increase its accuracy. Corner points are finally detected on the contour curves of building regions by using a scale-space detector. Experimental results show that the proposed building corner detection approach achieves an F-measure of 0.83 in the test image set and outperforms a number of state-of-the-art corner detectors by a large margin.
机译:在航空影像中,可以检测到拐点来描述建筑物的结构信息,以进行城市建模,地理定位等。对于这种特定的视觉任务,现有的通用拐角检测器性能较差,因为它们无法区分建筑物上的拐角点与其他物体(例如树木和阴影)上的拐角点。最近,已经开发出用于语义图像分割的全卷积网络(FCN),该网络能够通过使用手动标记的数据集的训练过程来识别指定种类的对象。受此成就的推动,本工作中提出了一种基于FCN的方法来检测航空影像中的建筑物拐角。首先,对端到端训练由改进的FCN和完全连接的条件随机字段(CRF)组成的DeepLab模型,以进行建筑物区域分割。然后通过使用形态学打开操作以提高其准确性进一步改善分割效果。最后,使用比例空间检测器在建筑物区域的轮廓曲线上检测角点。实验结果表明,所提出的建筑物拐角检测方法在测试图像集中实现了0.83的F值,并且在很大程度上优于许多最新的拐角检测器。

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