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SOTA
Graph Matching
Graph Matching On Willow Object Class
Graph Matching On Willow Object Class
评估指标
matching accuracy
评测结果
各个模型在此基准测试上的表现结果
Columns
模型名称
matching accuracy
Paper Title
Repository
GMN
0.7934
Deep Learning of Graph Matching
-
IPCA-GM
0.9006
Combinatorial Learning of Robust Deep Graph Matching: an Embedding based Approach.
GANN-MGM
0.9906
Graduated Assignment for Joint Multi-Graph Matching and Clustering with Application to Unsupervised Graph Matching Network Learning
GCAN
0.9700
Graph-Context Attention Networks for Size-Varied Deep Graph Matching
NGMv2-AFAT-I
-
Deep Learning of Partial Graph Matching via Differentiable Top-K
GLMNet
0.924
GLMNet: Graph Learning-Matching Networks for Feature Matching
-
GMT-BBGM
0.9813
GMTR: Graph Matching Transformers
EAGM
0.965
Adaptive Edge Attention for Graph Matching with Outliers
qc-DGM1
0.960
Deep Graph Matching under Quadratic Constraint
qc-DGM2
0.977
Deep Graph Matching under Quadratic Constraint
NGMv2-AFAT-U
-
Deep Learning of Partial Graph Matching via Differentiable Top-K
NGM
0.8530
Neural Graph Matching Network: Learning Lawler's Quadratic Assignment Problem with Extension to Hypergraph and Multiple-graph Matching
COMMON
0.9910
Graph Matching with Bi-level Noisy Correspondence
GCAN-AFAT-I
-
Deep Learning of Partial Graph Matching via Differentiable Top-K
Direct-MGM
0.987
Learning Constrained Structured Spaces with Application to Multi-Graph Matching
Direct-2HGM
0.981
Learning Constrained Structured Spaces with Application to Multi-Graph Matching
GAMnet
0.9662
GAMnet: Robust Feature Matching via Graph Adversarial-Matching Network
-
NGM-v2
0.9754
Neural Graph Matching Network: Learning Lawler's Quadratic Assignment Problem with Extension to Hypergraph and Multiple-graph Matching
CREAM
0.988
Cross-modal Retrieval with Noisy Correspondence via Consistency Refining and Mining
HNN-HM
0.968
Hypergraph Neural Networks for Hypergraph Matching
0 of 23 row(s) selected.
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