SOTAVerified

Graph Matching

Graph Matching is the problem of finding correspondences between two sets of vertices while preserving complex relational information among them. Since the graph structure has a strong capacity to represent objects and robustness to severe deformation and outliers, it is frequently adopted to formulate various correspondence problems in the field of computer vision. Theoretically, the Graph Matching problem can be solved by exhaustively searching the entire solution space. However, this approach is infeasible in practice because the solution space expands exponentially as the size of input data increases. For that reason, previous studies have attempted to solve the problem by using various approximation techniques.

Source: Consistent Multiple Graph Matching with Multi-layer Random Walks Synchronization

Papers

Showing 451477 of 477 papers

TitleStatusHype
GEST: the Graph of Events in Space and Time as a Common Representation between Vision and Language0
GLMNet: Graph Learning-Matching Networks for Feature Matching0
GM-MLIC: Graph Matching based Multi-Label Image Classification0
GMNet: Graph Matching Network for Large Scale Part Semantic Segmentation in the Wild0
GM-PLL: Graph Matching based Partial Label Learning0
GNCGCP - Graduated NonConvexity and Graduated Concavity Procedure0
Gollum: A Gold Standard for Large Scale Multi Source Knowledge Graph Matching0
Gotta match 'em all: Solution diversification in graph matching matched filters0
Graduated Assignment for Joint Multi-Graph Matching and Clustering with Application to Unsupervised Graph Matching Network Learning0
GraphAlign: Enhancing Accurate Feature Alignment by Graph matching for Multi-Modal 3D Object Detection0
Graph-based Global Robot Localization Informing Situational Graphs with Architectural Graphs0
Graph-based Proprioceptive Localization Using a Discrete Heading-Length Feature Sequence Matching Approach0
Graph-Based Resource Allocation with Conflict Avoidance for V2V Broadcast Communications0
GraphBEV: Towards Robust BEV Feature Alignment for Multi-Modal 3D Object Detection0
Graph Convolutions on Spectral Embeddings: Learning of Cortical Surface Data0
Graph Correspondence Transfer for Person Re-identification0
Graph Deconvolutional Generation0
Graph edit distance : a new binary linear programming formulation0
Graph Edit Distance Reward: Learning to Edit Scene Graph0
Graphing the Future: Activity and Next Active Object Prediction using Graph-based Activity Representations0
Graph Matching and Graph Rewriting: GREW tools for corpus exploration, maintenance and conversion0
Graph Matching: Relax at Your Own Risk0
Graph matching: relax or not?0
Graph Matching via Multiplicative Update Algorithm0
Graph Matching with Anchor Nodes: A Learning Approach0
Graph Network Modeling Techniques for Visualizing Human Mobility Patterns0
Graph Partitioning and Graph Neural Network based Hierarchical Graph Matching for Graph Similarity Computation0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1GMT-BBGMmatching accuracy0.84Unverified
2GMTRmatching accuracy0.84Unverified
3COMMONmatching accuracy0.83Unverified
4GCANmatching accuracy0.82Unverified
5URLmatching accuracy0.82Unverified
6CREAMmatching accuracy0.81Unverified
7ASAR-GMmatching accuracy0.81Unverified
8GAMnetmatching accuracy0.81Unverified
9NHGM-v2matching accuracy0.8Unverified
10EAGMmatching accuracy0.71Unverified
#ModelMetricClaimedVerifiedStatus
1COMMONmatching accuracy0.99Unverified
2GANN-MGMmatching accuracy0.99Unverified
3URLmatching accuracy0.99Unverified
4CREAMmatching accuracy0.99Unverified
5Direct-MGMmatching accuracy0.99Unverified
6GMT-BBGMmatching accuracy0.98Unverified
7Direct-2HGMmatching accuracy0.98Unverified
8qc-DGM2matching accuracy0.98Unverified
9NGM-v2matching accuracy0.98Unverified
10BBGMmatching accuracy0.97Unverified
#ModelMetricClaimedVerifiedStatus
1CREAMmatching accuracy0.85Unverified
2COMMONmatching accuracy0.85Unverified
3GMTRmatching accuracy0.83Unverified
4GMT-BBGMmatching accuracy0.83Unverified
5BBGMmatching accuracy0.82Unverified
6GCANmatching accuracy0.82Unverified
7NGM-v2matching accuracy0.81Unverified
8NGMmatching accuracy0.69Unverified
#ModelMetricClaimedVerifiedStatus
1GCAN-AFAT-UF1 score0.72Unverified
2GCAN-AFAT-IF1 score0.71Unverified
3NGMv2-AFAT-UF1 score0.7Unverified
4NGMv2-AFAT-IF1 score0.7Unverified
5NGMv2F1 score0.68Unverified
6PCA-GMF1 score0.58Unverified
#ModelMetricClaimedVerifiedStatus
1GCAN-AFAT-IF1 score0.73Unverified
2NGMv2-AFAT-IF1 score0.73Unverified
3NGMv2-AFAT-UF1 score0.72Unverified
4GCAN-AFAT-UF1 score0.71Unverified
5NGMv2F1 score0.7Unverified
6PCA-GMF1 score0.63Unverified
#ModelMetricClaimedVerifiedStatus
1SmatchSpearman Correlation96.57Unverified
2RematchSpearman Correlation95.32Unverified
3SemBleuSpearman Correlation94.83Unverified
4S2matchSpearman Correlation94.11Unverified
5WLKSpearman Correlation90.39Unverified
#ModelMetricClaimedVerifiedStatus
1URLF1 score0.95Unverified
2GUMBEL-IPFF1 score0.84Unverified
3IPCA-GMF1 score0.83Unverified
4GANN-MGMF1 score0.83Unverified