Altitude-Adaptive Vision-Only Geo-Localization for UAVs in GPS-Denied Environments 文章

ArXiv CS.CV2026-05-26NEWSen作者: Xingyu Shao, Mengfan He, Chunyu Li, Liangzheng Sun, Ziyang Meng

摘要

arXiv:2602.23872v3 Announce Type: replace Abstract: To address the scale mismatch caused by large altitude variations in UAV visual place recognition, we propose a monocular vision-only altitude-adaptive geo-localization framework. The method first estimates relative altitude from a single downward-looking image by transforming the input into the frequency domain and formulating altitude estimation as a regression-as-classification (RAC) problem. The estimated altitude is then used to crop the query image to a canonical scale, after which a classification-then-retrieval visual place recognition module performs coarse localization. To improve retrieval robustness under varying image quality, we further introduce a quality-adaptive margin classifier (QAMC) and refine the final location by weighted coordinate estimation over the top retrieved candidates.