论文标题
Eco-Tr:通过粗到精细的精炼的有效对应关系
ECO-TR: Efficient Correspondences Finding Via Coarse-to-Fine Refinement
论文作者
论文摘要
在统一功能对应模型中建模稀疏和致密的图像匹配最近引起了研究的兴趣。但是,现有的努力主要集中于提高匹配的准确性,同时忽略其效率,这对于现实世界的应用至关重要。在本文中,我们提出了一种有效的结构,称为有效的对应变压器(ECO-TR),通过以粗到精细的方式找到对应关系,从而显着提高了功能对应模型的效率。为了实现这一目标,多个变压器块是阶段式连接到在共享的多尺度特征提取网络上逐渐完善预测坐标的。在给定一对图像和任意查询坐标的情况下,所有对应关系均在单个进纸前通过。我们进一步提出了一种自适应查询聚类策略和基于不确定性的离群检测模块,以与提议的框架合作以进行更快,更好的预测。对各种稀疏和密集的匹配任务进行的实验证明了我们方法在效率和有效性上对现有的最新作品的优越性。
Modeling sparse and dense image matching within a unified functional correspondence model has recently attracted increasing research interest. However, existing efforts mainly focus on improving matching accuracy while ignoring its efficiency, which is crucial for realworld applications. In this paper, we propose an efficient structure named Efficient Correspondence Transformer (ECO-TR) by finding correspondences in a coarse-to-fine manner, which significantly improves the efficiency of functional correspondence model. To achieve this, multiple transformer blocks are stage-wisely connected to gradually refine the predicted coordinates upon a shared multi-scale feature extraction network. Given a pair of images and for arbitrary query coordinates, all the correspondences are predicted within a single feed-forward pass. We further propose an adaptive query-clustering strategy and an uncertainty-based outlier detection module to cooperate with the proposed framework for faster and better predictions. Experiments on various sparse and dense matching tasks demonstrate the superiority of our method in both efficiency and effectiveness against existing state-of-the-arts.