Authors
He Liu, Tao Wang, Congyan Lang, Songhe Feng, Yi Jin, Yidong Li
Publication date
2024/6/18
Journal
Pattern Recognition
Pages
110694
Publisher
Pergamon
Description
Differentiable solvers for the linear assignment problem (LAP) have attracted much research attention in recent years, which are usually embedded into learning frameworks as components. However, previous algorithms, with or without learning strategies, usually suffer from the degradation of the optimality with the increment of the problem size. In this paper, we propose a learnable linear assignment solver based on deep graph networks. Specifically, we first transform the cost matrix to a bipartite graph and convert the assignment task to the problem of selecting reliable edges from the constructed graph. Subsequently, a deep graph network is developed to aggregate and update the features of nodes and edges. Finally, the network predicts a label for each edge that indicates the assignment relationship. The experimental results on a synthetic dataset reveal that our method outperforms state-of-the-art baselines …
Total citations
2023202416
Scholar articles
H Liu, T Wang, C Lang, S Feng, Y Jin, Y Li - Pattern Recognition, 2024