Global Multi-Scale Fusion Self-Calibration Network for Remote Sensing Object Detection

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Abstract

Applications of remote sensing images in both defense and civilian sectors have spurred substantial research interest. In the field of remote sensing, object detection confronts challenges such as complex backgrounds, scale diversity, and the presence of dense small objects. To address these issues, we propose an improved deep learning-based model, the Global Multi-scale Fusion Self-calibration Network, which is expected to contribute to alleviating the challenges. It consists of three main components: the hierarchical feature aggregation backbone, which uses improved modules such as the receptive field context-aware feature extraction module, the global information acquisition module, and the simple parameter-free attention module to extract key features and minimize the background interference. To couple multi-scale features, we enhanced the fusing component and designed the multi-scale enhanced pyramid structure integrating the proposed new modules. During the detection phase, especially when focusing on small object detection, we designed a novel convolutional attention feature fusion head. This head is constructed to integrate local and global branches for feature extraction by leveraging channel shuffling and multi-head attention mechanisms for efficient and accurate detection. Experiments on the Detection in Optical Remote Sensing Images (DIOR), Northwestern Polytechnical University Very High-Resolution-10 (NWPU VHR-10), remote sensing object detection (RSOD), and DOTAv1.0 data Deliveredsets showbthat our method achieves mAP50(mean average IP: 125.17.16.94precision at 50%On: Sunintersection over union) of Copyright:69.7%, 91.3%,American94.2%, andSociety70.0%, respec-for Phottively, outperforming existing comparative methods. The proposed network is expected to provide new perspectives for remote sensing tasks and possible solutions for relevant applications in the image domain.

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APA

Chen, Y., Shi, X., Wang, X., Gu, Q., Zhang, C., Xu, L., … Yu, W. (2025). Global Multi-Scale Fusion Self-Calibration Network for Remote Sensing Object Detection. Photogrammetric Engineering and Remote Sensing, 91(10), 607–621. https://doi.org/10.14358/PERS.25-00002R4

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