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SpatiaLoc: Leveraging Multi-Level Spatial Enhanced Descriptors for Cross-Modal Localization

About

Cross-modal localization using text and point clouds enables robots to localize themselves via natural language descriptions, with applications in autonomous navigation and interaction between humans and robots. In this task, objects often recur across text and point clouds, making spatial relationships the most discriminative cues for localization. Given this characteristic, we present SpatiaLoc, a framework utilizing a coarse-to-fine strategy that emphasizes spatial relationships at both the instance and global levels. In the coarse stage, we introduce a Bezier Enhanced Object Spatial Encoder (BEOSE) that models spatial relationships at the instance level using quadratic Bezier curves. Additionally, a Frequency Aware Encoder (FAE) generates spatial representations in the frequency domain at the global level. In the fine stage, an Uncertainty Aware Gaussian Fine Localizer (UGFL) regresses 2D positions by modeling predictions as Gaussian distributions with a loss function aware of uncertainty. Extensive experiments on KITTI360Pose demonstrate that SpatiaLoc significantly outperforms existing state-of-the-art (SOTA) methods.

Tianyi Shang, Pengjie Xu, Zhaojun Deng, Zhenyu Li, Zhicong Chen, Lijun Wu• 2026

Related benchmarks

TaskDatasetResultRank
Global Place RecognitionKITTI360Pose (val)
Recall@10.52
15
Text-based position localizationKITTI360 Pose (test)
Localization Recall (k=1, ε < 5m)51
13
Text-to-point cloud localizationKITTI360 Pose (val)
Recall@k=1 (5m)54
11
Fine LocalizationKITTI360Pose (test)
Recall@1 (5m)0.51
10
Fine LocalizationKITTI360Pose (val)
Recall@k=1 (5m Error)54
10
Text-to-point-cloud-submap retrievalKITTI360Pose (test)
Recall@10.48
8
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