FlowWeb: Joint image set alignment by weaving consistent, pixel-wise correspondences

Tinghui Zhou, Yong Jae Lee, Stella X. Yu, Alexei A. Efros
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引用次数: 154

Abstract

Given a set of poorly aligned images of the same visual concept without any annotations, we propose an algorithm to jointly bring them into pixel-wise correspondence by estimating a FlowWeb representation of the image set. FlowWeb is a fully-connected correspondence flow graph with each node representing an image, and each edge representing the correspondence flow field between a pair of images, i.e. a vector field indicating how each pixel in one image can find a corresponding pixel in the other image. Correspondence flow is related to optical flow but allows for correspondences between visually dissimilar regions if there is evidence they correspond transitively on the graph. Our algorithm starts by initializing all edges of this complete graph with an off-the-shelf, pairwise flow method. We then iteratively update the graph to force it to be more self-consistent. Once the algorithm converges, dense, globally-consistent correspondences can be read off the graph. Our results suggest that FlowWeb improves alignment accuracy over previous pairwise as well as joint alignment methods.
FlowWeb:通过编织一致的、逐像素的对应来联合图像集对齐
给定一组没有任何注释的相同视觉概念的不良对齐图像,我们提出了一种算法,通过估计图像集的FlowWeb表示来联合将它们带入像素级对应。FlowWeb是一个全连接的对应流图,每个节点代表一张图像,每条边代表一对图像之间的对应流场,即一个矢量场,表示一张图像中的每个像素如何找到另一张图像中的对应像素。对应流与光流有关,但如果有证据表明它们在图上传递对应,则允许视觉上不同区域之间的对应。我们的算法首先用现成的两两流方法初始化这个完整图的所有边。然后我们迭代地更新图,使其更加自洽。一旦算法收敛,密集的,全局一致的对应就可以从图中读取出来。我们的结果表明,FlowWeb比以前的成对对齐和联合对齐方法提高了对齐精度。
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