CVJan 3, 2024

A Transformer-Based Adaptive Semantic Aggregation Method for UAV Visual Geo-Localization

arXiv:2401.01574v19 citationsh-index: 14PRCV
Originality Incremental advance
AI Analysis

It addresses a domain-specific problem for UAV and satellite image matching, with incremental improvements in part-level semantic representation.

This paper tackles UAV visual geo-localization by proposing a transformer-based method that adaptively aggregates semantic parts from image patches to improve feature robustness against viewpoint and scale changes, achieving superior performance on the University-1652 dataset.

This paper addresses the task of Unmanned Aerial Vehicles (UAV) visual geo-localization, which aims to match images of the same geographic target taken by different platforms, i.e., UAVs and satellites. In general, the key to achieving accurate UAV-satellite image matching lies in extracting visual features that are robust against viewpoint changes, scale variations, and rotations. Current works have shown that part matching is crucial for UAV visual geo-localization since part-level representations can capture image details and help to understand the semantic information of scenes. However, the importance of preserving semantic characteristics in part-level representations is not well discussed. In this paper, we introduce a transformer-based adaptive semantic aggregation method that regards parts as the most representative semantics in an image. Correlations of image patches to different parts are learned in terms of the transformer's feature map. Then our method decomposes part-level features into an adaptive sum of all patch features. By doing this, the learned parts are encouraged to focus on patches with typical semantics. Extensive experiments on the University-1652 dataset have shown the superiority of our method over the current works.

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