Remote Sensing Object Detection Based on Global Context Attentional Feature Fusion Pyramid Network
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    Abstract:

    Remote sensing object detection usually faces challenges such as large variations in image scale, small and densely arranged targets, and high aspect ratios, which make it difficult to achieve high-precision oriented object detection. This study proposes a global context attentional feature fusion pyramid network. First, a triple attentional feature fusion module is designed, which can better fuse features with semantic and scale inconsistencies. Then, an intra-layer conditioning method is introduced to improve the module and a global context enhancement network is proposed, which refines deep features containing high-level semantic information to improve the characterization ability. On this basis, a global context attentional feature fusion pyramid network is designed with the idea of global centralized regulation to modulate shallow multi-scale features by using attention-modulated features. Experiments have been conducted on multiple public data sets, and results show that the high-precision evaluation indicators of the proposed network are better than those of the current advanced models.

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孙文赟,车嘉航,金忠.基于全局上下文注意力特征融合金字塔网络的遥感目标检测.计算机系统应用,2024,33(9):114-122

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History
  • Received:March 13,2024
  • Revised:April 10,2024
  • Online: July 26,2024
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