TY - GEN
T1 - Point-Line Joint Matching Algorithm Based on Graph Neural Networks
AU - Tao, Yimeng
AU - You, Sibo
AU - Ding, Yan
AU - Mo, Bo
AU - Cao, Qingxin
AU - Fan, Yixiao
AU - Song, Ping
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Image matching faces challenges in maintaining robustness under complex conditions such as sparse textural regions, scenes with repetitive structural patterns, and large viewpoint variations, where neither point-based nor line-based feature matching alone can achieve consistent performance across all scenarios.This paper presents a novel graph neural network-based point-line joint matching algorithm designed to overcome these limitations. First, we introduce a connection matrix representation that unifies point and line features within a graph structure, eliminating the need for expensive line descriptor extraction while preserving geometric relationships. Second, we design a dynamic graph neural network incorporating self-attention, linear propagation, and cross-attention mechanisms to capture both intra-image and inter-image feature associations, enhancing global consistency and discriminative power. Third, we employ a Dual-Softmax matching strategy combined with negative log-likelihood loss to achieve efficient and robust matching even in repetitive structural scenarios. Extensive evaluations on the Wireframe dataset confirm our method's superiority, achieving 35.3% AUC-RANSAC@1px for point matching and 0.60 mAP for line matching, while maintaining real-time efficiency.Finally, we evaluate our method on the task of aircraft pose estimation.
AB - Image matching faces challenges in maintaining robustness under complex conditions such as sparse textural regions, scenes with repetitive structural patterns, and large viewpoint variations, where neither point-based nor line-based feature matching alone can achieve consistent performance across all scenarios.This paper presents a novel graph neural network-based point-line joint matching algorithm designed to overcome these limitations. First, we introduce a connection matrix representation that unifies point and line features within a graph structure, eliminating the need for expensive line descriptor extraction while preserving geometric relationships. Second, we design a dynamic graph neural network incorporating self-attention, linear propagation, and cross-attention mechanisms to capture both intra-image and inter-image feature associations, enhancing global consistency and discriminative power. Third, we employ a Dual-Softmax matching strategy combined with negative log-likelihood loss to achieve efficient and robust matching even in repetitive structural scenarios. Extensive evaluations on the Wireframe dataset confirm our method's superiority, achieving 35.3% AUC-RANSAC@1px for point matching and 0.60 mAP for line matching, while maintaining real-time efficiency.Finally, we evaluate our method on the task of aircraft pose estimation.
KW - Graph neural networks
KW - Image matching
KW - Point-line fusion
UR - https://www.scopus.com/pages/publications/105037369692
U2 - 10.1109/ICICML67980.2025.11333776
DO - 10.1109/ICICML67980.2025.11333776
M3 - Conference contribution
AN - SCOPUS:105037369692
T3 - 2025 4th International Conference on Image Processing, Computer Vision and Machine Learning, ICICML 2025
SP - 473
EP - 481
BT - 2025 4th International Conference on Image Processing, Computer Vision and Machine Learning, ICICML 2025
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2025 4th International Conference on Image Processing, Computer Vision and Machine Learning, ICICML 2025
Y2 - 21 November 2025 through 23 November 2025
ER -