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Ground Camera Image and Large-Scale 3-D Image-Based Point Cloud Registration Based on Learning Domain Invariant Feature Descriptors

机译:基于学习域不变特征描述符的地面摄像机图像和基于大规模的基于3-D图像的点云注册

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摘要

Multisource data are captured from different sensors or generated with different generation mechanisms. Ground camera images (images taken from ground-based camera) and rendered images (synthesized by the position information from 3-D image-based point cloud) are different-source geospatial data, called cross-domain images. Particularly, in outdoor environments, the registration relationship between the above cross-domain images is available to establish the spatial relationship between 2-D and 3-D space, which is an indirect solution for virtual–real registration of augmented reality (AR). However, the traditional handcrafted feature descriptors cannot match the above cross-domain images because of the low quality of rendered images and the domain gap between cross-domain images. In this article, inspired by the success achieved by deep learning in computer vision, we first propose an end-to-end network, DIFD-Net, to learn domain invariant feature descriptors (DIFDs) for cross-domain image patches. The DIFDs are used for cross-domain image patch retrieval to the registration of ground camera and rendered images. Second, we construct a domain-kept consistent loss function, which balances the feature descriptors for narrowing the gap in different domains, to optimize DIFD-Net. Specially, the negative samples are generated from positive during training, and the introduced constraint of intermediate feature maps increases extra supervision information to learn feature descriptors. Finally, experiments show the superiority of DIFDs for the retrieval of cross-domain image patches, which achieves state-of-the-art retrieval performance. Additionally, we use DIFDs to match ground camera images and rendered images, and verify the feasibility of the derived AR virtual–real registration in open outdoor environments
机译:多源数据从不同的传感器捕获或使用不同的生成机制生成。接地摄像机图像(从地面相机拍摄的图像)和渲染图像(由3-D图像的点云的位置信息合成)是不同源地理空间数据,称为跨域图像。特别地,在室外环境中,上述跨域图像之间的登记关系可用于建立二进制和三维空间之间的空间关系,这是用于增强现实(AR)的虚拟实际登记的间接解决方案。然而,由于渲染图像的质量低,并且跨域图像之间的域间隙,传统的手工制作特征描述符不能匹配上述跨域图像。在本文中,通过深入学习在计算机愿景中取得的成功,我们首先提出了一个端到端网络,Difd-Net,用于学习跨域图像修补程序的域不变特征描述符(DIFDS)。 DIFDS用于跨域图像贴片检索到接地相机的注册和呈现图像。其次,我们构建一个域 - 保存的一致损耗函数,该丢失函数余额余额来缩小不同域中的间隙,以优化Difd-net。特别地,在训练期间从阳性产生负样本,并且引入的中间特征图的约束增加了学习特征描述符的额外监督信息。最后,实验表明,用于检索跨域图像斑块的不同之处,这实现了最先进的检索性能。此外,我们使用Difds匹配地面相机图像和渲染图像,并验证派生AR虚拟真实注册在开放式户外环境中的可行性

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