基于变换器和视觉基础模型的跨视角遥感图像检索方法

Changjiang Yin, Qin Ye, Junqi Luo
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引用次数: 0

摘要

摘要由于视角的不同,利用地理参照卫星正射影像检索缺乏 POS 信息的无人机图像具有挑战性。现有的大多数方法都依赖于具有大量参数的深度神经网络,从而导致在网络训练方面投入大量的时间和资金。因此,这些方法可能不太适合对时效性要求较高的下游任务。在这项工作中,我们提出了一种基于变换器和视觉基础模型的跨视角遥感图像检索方法。我们研究了视觉基础模型从跨视角图像中提取共同特征的潜力。训练只在一个自行设计的小型检索头上进行,减轻了网络训练的负担。具体来说,我们设计了一个 CVV 模块来优化从视觉基础模型中提取的特征,使这些特征更适合跨视图图像检索任务。我们还设计了一个 MLP 头来实现相似性判别。我们在一个包含多个场景的公开数据集上对该方法进行了验证。我们的方法在公共数据集衍生的 15 个子数据集(10 或 50 个场景类别)上显示出了卓越的效率和准确性,这在场景类别精简、计算资源有限的工程应用中具有实用价值。此外,我们还对网络设计进行了全面讨论和消融实验,以验证其有效性。此外,我们还分析了网络中是否存在过拟合现象,并讨论了我们研究的局限性,提出了未来改进的潜在途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Transformer and Visual Foundation Model-Based Method for Cross-View Remote Sensing Image Retrieval
Abstract. Retrieving UAV images that lack POS information with georeferenced satellite orthoimagery is challenging due to the differences in angles of views. Most existing methods rely on deep neural networks with a large number of parameters, leading to substantial time and financial investments in network training. Consequently, these methods may not be well-suited for downstream tasks that have high timeliness requirements. In this work, we propose a cross-view remote sensing image retrieval method based on transformer and visual foundation model. We investigated the potential of visual foundation model for extracting common features from cross-view images. Training is only conducted on a small, self-designed retrieval head, alleviating the burden of network training. Specifically, we designed a CVV module to optimize the features extracted from the visual foundation model, making these features more adept for cross-view image retrieval tasks. And we designed an MLP head to achieve similarity discrimination. The method is verified on a publicly available dataset containing multiple scenes. Our method shows excellent results in terms of both efficiency and accuracy on 15 sub-datasets (10 or 50 scene categories) derived from the public dataset, which holds practical value in engineering applications with streamlined scene categories and constrained computational resources. Furthermore, we initiated a comprehensive discussion and conducted ablation experiments on the network design to validate its efficacy. Additionally, we analyzed the presence of overfitting within the network and deliberated on the limitations of our study, proposing potential avenues for future enhancements.
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