CVROMay 27, 2021

i3dLoc: Image-to-range Cross-domain Localization Robust to Inconsistent Environmental Conditions

arXiv:2105.12883v225 citations
AI Analysis

This addresses visual localization for robotics or autonomous systems in dynamic indoor/outdoor scenes, representing a strong specific gain.

The paper tackles the problem of localizing a camera relative to a 3D point cloud map in varying environmental conditions, achieving around 3 times higher place retrieval and localization accuracy compared to state-of-the-art methods.

We present a method for localizing a single camera with respect to a point cloud map in indoor and outdoor scenes. The problem is challenging because correspondences of local invariant features are inconsistent across the domains between image and 3D. The problem is even more challenging as the method must handle various environmental conditions such as illumination, weather, and seasonal changes. Our method can match equirectangular images to the 3D range projections by extracting cross-domain symmetric place descriptors. Our key insight is to retain condition-invariant 3D geometry features from limited data samples while eliminating the condition-related features by a designed Generative Adversarial Network. Based on such features, we further design a spherical convolution network to learn viewpoint-invariant symmetric place descriptors. We evaluate our method on extensive self-collected datasets, which involve \textit{Long-term} (variant appearance conditions), \textit{Large-scale} (up to $2km$ structure/unstructured environment), and \textit{Multistory} (four-floor confined space). Our method surpasses other current state-of-the-arts by achieving around $3$ times higher place retrievals to inconsistent environments, and above $3$ times accuracy on online localization. To highlight our method's generalization capabilities, we also evaluate the recognition across different datasets. With a single trained model, i3dLoc can demonstrate reliable visual localization in random conditions.

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