条件图像匹配的共同注意

Olivia Wiles, Sébastien Ehrhardt, Andrew Zisserman
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引用次数: 32

摘要

我们提出了一种新的方法来确定野外在光照、视点、环境和材料的大变化下图像对之间的对应关系。虽然其他方法通过独立处理图像来找到图像对之间的对应关系,但我们将两个图像作为条件来隐式地考虑它们之间的差异。为了实现这一目标,我们引入了(i)空间注意机制(共同注意模块,CoAM)来调节两个图像上的学习特征,以及(ii)用于在测试时选择最佳匹配的显著性分数。CoAM可以添加到标准架构中,并使用自我监督或监督数据进行训练,并在困难条件下实现显着的性能改进,例如大视点变化。我们证明,使用CoAM的模型在广泛的任务上实现了最先进的或具有竞争力的结果:局部匹配、相机定位、3D重建和图像风格化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Co-Attention for Conditioned Image Matching
We propose a new approach to determine correspondences between image pairs in the wild under large changes in illumination, viewpoint, context, and material. While other approaches find correspondences between pairs of images by treating the images independently, we instead condition on both images to implicitly take account of the differences between them. To achieve this, we introduce (i) a spatial attention mechanism (a co-attention module, CoAM) for conditioning the learned features on both images, and (ii) a distinctiveness score used to choose the best matches at test time. CoAM can be added to standard architectures and trained using self-supervision or supervised data, and achieves a significant performance improvement under hard conditions, e.g. large viewpoint changes. We demonstrate that models using CoAM achieve state of the art or competitive results on a wide range of tasks: local matching, camera localization, 3D reconstruction, and image stylization.
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