|国家预印本平台
首页|Learning Hypergraph Labeling for Feature Matching

Learning Hypergraph Labeling for Feature Matching

Learning Hypergraph Labeling for Feature Matching

来源:Arxiv_logoArxiv
英文摘要

This study poses the feature correspondence problem as a hypergraph node labeling problem. Candidate feature matches and their subsets (usually of size larger than two) are considered to be the nodes and hyperedges of a hypergraph. A hypergraph labeling algorithm, which models the subset-wise interaction by an undirected graphical model, is applied to label the nodes (feature correspondences) as correct or incorrect. We describe a method to learn the cost function of this labeling algorithm from labeled examples using a graphical model training algorithm. The proposed feature matching algorithm is different from the most of the existing learning point matching methods in terms of the form of the objective function, the cost function to be learned and the optimization method applied to minimize it. The results on standard datasets demonstrate how learning over a hypergraph improves the matching performance over existing algorithms, notably one that also uses higher order information without learning.

Vladimir Pavlovic、Ahmed Elgammal、Toufiq Parag

计算技术、计算机技术

Vladimir Pavlovic,Ahmed Elgammal,Toufiq Parag.Learning Hypergraph Labeling for Feature Matching[EB/OL].(2011-07-13)[2025-05-21].https://arxiv.org/abs/1107.2553.点此复制

评论