论文标题
带有双向合奏的两流对称网络,用于空中图像匹配
A Two-Stream Symmetric Network with Bidirectional Ensemble for Aerial Image Matching
论文作者
论文摘要
在本文中,我们提出了一种新颖的方法,可以精确地匹配两个通过两流深网在不同环境中获得的航空图像。通过内部增强目标图像,该网络考虑了三个输入图像的两流图像,并反映了训练中的附加增强对。结果,深网的训练过程是正规化的,网络对于航空图像的方差变得可靠。此外,我们引入了一种基于双向网络的集合方法,该方法是由几何变换的同构性质激励的。我们获得了两个没有任何其他网络或参数的全局变换参数,可以减轻不对称匹配结果,并通过融合两个结果来显着改善性能。在实验中,我们采用了Google Earth和国际摄影测量和遥感学会(ISPRS)的空中图像。为了定量评估我们的结果,我们应用了正确关键点(PCK)度量的概率,该指标衡量了匹配程度。定性和定量结果表明,与与空中图像相匹配的常规方法相比,性能差距很大。所有代码和我们训练有素的模型以及数据集可在线提供。
In this paper, we propose a novel method to precisely match two aerial images that were obtained in different environments via a two-stream deep network. By internally augmenting the target image, the network considers the two-stream with the three input images and reflects the additional augmented pair in the training. As a result, the training process of the deep network is regularized and the network becomes robust for the variance of aerial images. Furthermore, we introduce an ensemble method that is based on the bidirectional network, which is motivated by the isomorphic nature of the geometric transformation. We obtain two global transformation parameters without any additional network or parameters, which alleviate asymmetric matching results and enable significant improvement in performance by fusing two outcomes. For the experiment, we adopt aerial images from Google Earth and the International Society for Photogrammetry and Remote Sensing (ISPRS). To quantitatively assess our result, we apply the probability of correct keypoints (PCK) metric, which measures the degree of matching. The qualitative and quantitative results show the sizable gap of performance compared to the conventional methods for matching the aerial images. All code and our trained model, as well as the dataset are available online.