CVROMay 27, 2025

Visual Loop Closure Detection Through Deep Graph Consensus

arXiv:2505.21754v11 citationsh-index: 34Has CodeIROS
Originality Incremental advance
AI Analysis

This work addresses the challenge of reliable loop closure detection for online SLAM systems, offering a robust and efficient solution that is incremental over existing deep learning approaches.

The paper tackles the problem of false positive loop closures in visual SLAM by introducing LoopGNN, a graph neural network that uses neighborhoods of keyframes for consensus-based detection, achieving high precision and recall while being computationally efficient compared to traditional methods.

Visual loop closure detection traditionally relies on place recognition methods to retrieve candidate loops that are validated using computationally expensive RANSAC-based geometric verification. As false positive loop closures significantly degrade downstream pose graph estimates, verifying a large number of candidates in online simultaneous localization and mapping scenarios is constrained by limited time and compute resources. While most deep loop closure detection approaches only operate on pairs of keyframes, we relax this constraint by considering neighborhoods of multiple keyframes when detecting loops. In this work, we introduce LoopGNN, a graph neural network architecture that estimates loop closure consensus by leveraging cliques of visually similar keyframes retrieved through place recognition. By propagating deep feature encodings among nodes of the clique, our method yields high-precision estimates while maintaining high recall. Extensive experimental evaluations on the TartanDrive 2.0 and NCLT datasets demonstrate that LoopGNN outperforms traditional baselines. Additionally, an ablation study across various keypoint extractors demonstrates that our method is robust, regardless of the type of deep feature encodings used, and exhibits higher computational efficiency compared to classical geometric verification baselines. We release our code, supplementary material, and keyframe data at https://loopgnn.cs.uni-freiburg.de.

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