ASpanFormer:无检测器图像匹配与自适应跨度变压器

Hongkai Chen, Zixin Luo, Lei Zhou, Yurun Tian, Mingmin Zhen, Tian Fang, D. McKinnon, Yanghai Tsin, Long Quan
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引用次数: 48

摘要

跨图像生成健壮可靠的通信是各种应用程序的基本任务。为了在全局和局部粒度上捕获上下文,我们提出了ASpanFormer,这是一种基于transformer的无检测器匹配器,它建立在分层注意力结构上,采用了一种新颖的注意力操作,能够以自适应的方式调整注意力广度。为了实现这一目标,首先在每个交叉注意阶段对流图进行回归,定位搜索区域的中心。接下来,在中心周围生成采样网格,其大小不是经验配置为固定的,而是根据与流程图一起估计的像素不确定性自适应计算。最后,在派生区域内计算两幅图像的注意力,称为注意力广度。通过这些方法,我们不仅能够保持远程依赖关系,而且还能够在高相关性的像素之间实现细粒度关注,从而补偿匹配任务中必要的局部性和分段平滑性。在广泛的评估基准上的最先进的准确性验证了我们方法的强大匹配能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ASpanFormer: Detector-Free Image Matching with Adaptive Span Transformer
Generating robust and reliable correspondences across images is a fundamental task for a diversity of applications. To capture context at both global and local granularity, we propose ASpanFormer, a Transformer-based detector-free matcher that is built on hierarchical attention structure, adopting a novel attention operation which is capable of adjusting attention span in a self-adaptive manner. To achieve this goal, first, flow maps are regressed in each cross attention phase to locate the center of search region. Next, a sampling grid is generated around the center, whose size, instead of being empirically configured as fixed, is adaptively computed from a pixel uncertainty estimated along with the flow map. Finally, attention is computed across two images within derived regions, referred to as attention span. By these means, we are able to not only maintain long-range dependencies, but also enable fine-grained attention among pixels of high relevance that compensates essential locality and piece-wise smoothness in matching tasks. State-of-the-art accuracy on a wide range of evaluation benchmarks validates the strong matching capability of our method.
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