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arxiv 2309.02230 v1 pith:4JFIXSJX submitted 2023-09-05 cs.CV cs.AI

DCP-Net: A Distributed Collaborative Perception Network for Remote Sensing Semantic Segmentation

classification cs.CV cs.AI
keywords collaborativedcp-netfeaturesperceptioncollaborationdistributedimprovinglimited
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Onboard intelligent processing is widely applied in emergency tasks in the field of remote sensing. However, it is predominantly confined to an individual platform with a limited observation range as well as susceptibility to interference, resulting in limited accuracy. Considering the current state of multi-platform collaborative observation, this article innovatively presents a distributed collaborative perception network called DCP-Net. Firstly, the proposed DCP-Net helps members to enhance perception performance by integrating features from other platforms. Secondly, a self-mutual information match module is proposed to identify collaboration opportunities and select suitable partners, prioritizing critical collaborative features and reducing redundant transmission cost. Thirdly, a related feature fusion module is designed to address the misalignment between local and collaborative features, improving the quality of fused features for the downstream task. We conduct extensive experiments and visualization analyses using three semantic segmentation datasets, including Potsdam, iSAID and DFC23. The results demonstrate that DCP-Net outperforms the existing methods comprehensively, improving mIoU by 2.61%~16.89% at the highest collaboration efficiency, which promotes the performance to a state-of-the-art level.

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