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Adversarial Exploitation of Data Diversity Improves Visual Localization

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Visual localization, which estimates a camera's pose within a known scene, is a fundamental capability for autonomous systems. While absolute pose regression (APR) methods have shown promise for efficient inference, they often struggle with generalization. Recent approaches attempt to address this through data augmentation with varied viewpoints, yet they overlook a critical factor: appearance diversity. In this work, we identify appearance variation as the key to robust localization. Specifically, we first lift real 2D images into 3D Gaussian Splats with varying appearance and deblurring ability, enabling the synthesis of diverse training data that varies not just in poses but also in environmental conditions such as lighting and weather. To fully unleash the potential of the appearance-diverse data, we build a two-branch joint training pipeline with an adversarial discriminator to bridge the syn-to-real gap. Extensive experiments demonstrate that our approach significantly outperforms state-of-the-art methods, reducing translation and rotation errors by 50\% and 41\% on indoor datasets, and 38\% and 44\% on outdoor datasets. Most notably, our method shows remarkable robustness in dynamic driving scenarios under varying weather conditions and in day-to-night scenarios, where previous APR methods fail. Project Page: https://ai4ce.github.io/RAP/

Sihang Li, Siqi Tan, Bowen Chang, Jing Zhang, Chen Feng, Yiming Li• 2024

Related benchmarks

TaskDatasetResultRank
Visual Localization7Scenes (test)
Chess Median Angular Error (°)0.84
61
Visual Localization7Scenes (Office)
Median Translation Error (cm)0.59
25
Visual Localization7Scenes Chess
Median Translation Error (cm)0.33
25
Visual Localization7Scenes Fire
Median Translation Error (cm)0.51
25
Visual Localization7Scenes Stairs
Median Translation Error (cm)1.11
25
Visual Localization7Scenes Heads
Median Translation Error (cm)0.4
25
Visual Localization7Scenes Pumpkin
Median Translation Error (cm)0.83
25
Visual Localization7Scenes RedKitchen
Median Translation Error (cm)0.5
25
Relocalization7-Scenes Average
Median Translation Error (cm)0.61
18
Visual LocalizationCambridge Landmark (test)
Kings Median Translation Error (cm)18
18
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