A Camera-Cooperative ISAC Framework for Multimodal Non-Cooperative UAVs Sensing
Wenfeng Wu, Luping Xiang, Kun Yang

TL;DR
This paper introduces a Camera-Cooperative ISAC framework that enhances UAV detection and tracking by combining multimodal sensing, significantly reducing resource overhead and improving accuracy.
Contribution
It proposes a novel multimodal sensing framework with two key models for improved UAV sensing and resource efficiency in ISAC systems.
Findings
Achieves 71% reduction in beam steering overhead.
Reduces tracking overhead by 1.69-11.15%.
Maintains high angular estimation accuracy.
Abstract
The detection of non-cooperative unmanned aerial vehicles (UAVs) presents significant challenges for Integrated Sensing and Communication (ISAC) systems due to the inherent limitations of single-modal perception and the competition for shared communication and sensing resources. To address these challenges, this paper proposes a novel Camera-Cooperative ISAC (CC-ISAC) framework that employs multimodal sensing to enable efficient UAV beam steering and tracking. The proposed framework employs cameras for coarse-grained airspace monitoring and utilizes ISAC for fine-grained, high-precision sensing, forming a complementary perception loop that enhances both sensing accuracy and resource efficiency. Within this framework, two key modules are developed: (1) a Vision-to-Echo Data Alignment (V2EDA) model that aligns visual and echo-domain features through cross-attention mechanisms, and (2) a…
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