2023
DOI: 10.3390/rs15174224
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Adaptive Adjacent Layer Feature Fusion for Object Detection in Remote Sensing Images

Xuesong Zhang,
Zhihui Gong,
Haitao Guo
et al.

Abstract: Object detection in remote sensing images faces the challenges of a complex background, large object size variations, and high inter-class similarity. To address these problems, we propose an adaptive adjacent layer feature fusion (AALFF) method, which is developed on the basis of RTMDet. Specifically, the AALFF method incorporates an adjacent layer feature fusion enhancement (ALFFE) module, designed to capture high-level semantic information and accurately locate object spatial positions. ALFFE also effective… Show more

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Cited by 4 publications
(2 citation statements)
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References 53 publications
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“…Li et al [31] proposed a cross-layer attention network aiming to obtain the stronger features of small objects for better detection. Zhang et al [32] proposed an adaptive adjacent layer feature fusion (AALFF) method to capture high-level semantic information and accurately locate object spatial positions and improve the adaptability to objects with different sizes.…”
Section: Remote Sensing Image Detectionmentioning
confidence: 99%
“…Li et al [31] proposed a cross-layer attention network aiming to obtain the stronger features of small objects for better detection. Zhang et al [32] proposed an adaptive adjacent layer feature fusion (AALFF) method to capture high-level semantic information and accurately locate object spatial positions and improve the adaptability to objects with different sizes.…”
Section: Remote Sensing Image Detectionmentioning
confidence: 99%
“…This type of algorithm has high computational complexity but high detection accuracy. One-stage algorithms [27][28][29] perform object detection and localization directly in the image without an explicit candidate box generation step. This approach has the advantages of good real-time performance, simplicity, and efficiency.…”
Section: Introductionmentioning
confidence: 99%