CVROJun 17, 2025

VisLanding: Monocular 3D Perception for UAV Safe Landing via Depth-Normal Synergy

arXiv:2506.14525v12 citationsh-index: 6IROS
Originality Incremental advance
AI Analysis

This work addresses safe landing for UAVs in unknown environments, representing an incremental advance with domain-specific application.

The paper tackles the problem of autonomous UAV landing in complex environments by proposing VisLanding, a monocular 3D perception framework that uses depth-normal synergy to estimate safe landing zones, achieving significant accuracy improvements and robust cross-domain generalization.

This paper presents VisLanding, a monocular 3D perception-based framework for safe UAV (Unmanned Aerial Vehicle) landing. Addressing the core challenge of autonomous UAV landing in complex and unknown environments, this study innovatively leverages the depth-normal synergy prediction capabilities of the Metric3D V2 model to construct an end-to-end safe landing zones (SLZ) estimation framework. By introducing a safe zone segmentation branch, we transform the landing zone estimation task into a binary semantic segmentation problem. The model is fine-tuned and annotated using the WildUAV dataset from a UAV perspective, while a cross-domain evaluation dataset is constructed to validate the model's robustness. Experimental results demonstrate that VisLanding significantly enhances the accuracy of safe zone identification through a depth-normal joint optimization mechanism, while retaining the zero-shot generalization advantages of Metric3D V2. The proposed method exhibits superior generalization and robustness in cross-domain testing compared to other approaches. Furthermore, it enables the estimation of landing zone area by integrating predicted depth and normal information, providing critical decision-making support for practical applications.

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