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FANet: Frequency-Aware Attention-Based Tiny-Object Detection in Remote Sensing Images

Zixiao Wen, Peng Li, Yuhan Liu, Jingming Chen, X.Y. Xiang, Yuan Li, Huixian Wang, Zhao Yongchao, Guangyao Zhou

2025Remote Sensing7 citationsDOIOpen Access PDF

Abstract

In recent years, deep learning-based remote sensing object detection has achieved remarkable progress, yet the detection of tiny objects remains a significant challenge. Tiny objects in remote sensing images typically occupy only a few pixels, resulting in low contrast, poor resolution, and high sensitivity to localization errors. Their diverse scales and appearances, combined with complex backgrounds and severe class imbalance, further complicate the detection tasks. Conventional spatial feature extraction methods often struggle to capture the discriminative characteristics of tiny objects, especially in the presence of noise and occlusion. To address these challenges, we propose a frequency-aware attention-based tiny-object detection network with two plug-and-play modules that leverage frequency-domain information to enhance the targets. Specifically, we introduce a Multi-Scale Frequency Feature Enhancement Module (MSFFEM) to adaptively highlight the contour and texture details of tiny objects while suppressing background noise. Additionally, a Channel Attention-based RoI Enhancement Module (CAREM) is proposed to selectively emphasize high-frequency responses within RoI features, further improving object localization and classification. Furthermore, to mitigate sample imbalance, we employ multi-directional flip sample augmentation and redundancy filtering strategies, which significantly boost detection performance for few-shot categories. Extensive experiments on public object detection datasets, i.e., AI-TOD, VisDrone2019, and DOTA-v1.5, demonstrate that the proposed FANet consistently improves detection performance for tiny objects, outperforming existing methods and providing new insights into the integration of frequency-domain analysis and attention mechanisms for robust tiny-object detection in remote sensing applications.

Topics & Concepts

Computer scienceArtificial intelligenceObject detectionComputer visionDiscriminative modelRedundancy (engineering)Leverage (statistics)Feature extractionPattern recognition (psychology)Remote sensingRobustness (evolution)Noise (video)Feature (linguistics)Remote sensing applicationSample (material)Change detectionSensitivity (control systems)Channel (broadcasting)Object (grammar)Region of interestAdvanced Neural Network ApplicationsRemote-Sensing Image ClassificationDomain Adaptation and Few-Shot Learning