QdaVPR: A novel query-based domain-agnostic model for visual place recognition
Shanshan Wan, Lai Kang, Yingmei Wei, Tianrui Shen, Haixuan Wang, Chao Zuo

TL;DR
QdaVPR introduces a query-based, domain-agnostic visual place recognition model utilizing adversarial learning and synthetic domain augmentation to improve robustness across diverse environmental conditions.
Contribution
It proposes a novel dual-level adversarial framework and triplet supervision for domain invariance and discriminative global descriptors in VPR.
Findings
Achieves state-of-the-art results on multiple benchmarks.
Outperforms existing models in seasonal, day-night, and weather variations.
Demonstrates robustness across diverse environmental conditions.
Abstract
Visual place recognition (VPR) aiming at predicting the location of an image based solely on its visual features is a fundamental task in robotics and autonomous systems. Domain variation remains one of the main challenges in VPR and is relatively unexplored. Existing VPR models attempt to achieve domain agnosticism either by training on large-scale datasets that inherently contain some domain variations, or by being specifically adapted to particular target domains. In practice, the former lacks explicit domain supervision, while the latter generalizes poorly to unseen domain shifts. This paper proposes a novel query-based domain-agnostic VPR model called QdaVPR. First, a dual-level adversarial learning framework is designed to encourage domain invariance for both the query features forming the global descriptor and the image features from which these query features are derived. Then,…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Image and Video Retrieval Techniques · Multimodal Machine Learning Applications
