采用强制检验-证据增强的跨时空多源异构数据关联方法OA
A Method for Cross-temporal and Cross-spatial Multi-source Heterogeneous Data Association Using Mandatory Inspection and Evidence Augmentation
在跨时空多源异构数据关联问题中,由于大时间跨度导致的目标跨时空情况特别突出,传统的基于预测-判别和新型的基于深度嵌入模型的关联方法均难以适用,是亟待解决的难题.针对大时空转移条件下目标跨时空多源异构数据关联问题,提出一种采用强制检验-证据增强的跨时空多源异构数据关联方法,考虑目标物时空约束,利用多源异构数据之间的共有信息,包括属性、速度、位置、航向等,构建强制检验和证据增强关联特征,实现关联判决.基于仿真数据的实验结果表明,相比于单一维度 的 关 联 方 法,该方法可以显著提高跨时空多源异构数据关联的命中率和召回率,Hits@1 和 Hits@5 命中率分别提高了至少 11%和 4%,达到了 99%和 100%,R@1 和 R@5 召回率分别提高了至少11%和9%,达到了99%和 87%.此外,构建的跨时空多源异构数据关联框架,允许用户快速拓展新的关联特征,如语义关联特征、外观关联特征等,具有良好的可拓展性.
In the context of cross-spatiotemporal multi-source heterogeneous data association,the cross-spatiotemporal situation of targets arising from large temporal spans poses a particularly prominent challenge.Both traditional prediction-discrimination-based and novel deep embedding model-based association methods struggle to apply effectively,highlighting an urgent need for solutions.Addressing the issue of cross-spatiotemporal and multi-source heterogeneous data association for targets under the condition of large spatiotemporal shifts,a method using mandatory inspection and evidence augmentation-based is proposed.This method considers the spatiotemporal constraints of targets and leverages the shared information across multi-source heterogeneous data,including attributes,speeds,positions,headings,etc.,to construct mandatory inspection and evidence augmentation association features,thereby enabling association decisions.Experimental results based on simulation data demonstrate that,compared with single-dimensional association methods,the proposed method significantly improves the hit rate and recall rate of cross-spatiotemporal multi-source heterogeneous data association,the hit rates of Hits@1 and Hits@5 are increased by at least 11%and 4%respectively,reaching 99%and 100%;the recall rates of R@1 and R@5 are increased by at least 11%and 9%respectively,reaching 99%and 87%.Furthermore,the constructed cross-spatiotemporal multi-source heterogeneous data association framework allows users to rapidly extend new association features,such as semantic association features and appearance association features,showcasing excellent scalability.
张海瀛;刘鑫;王明阳;王成刚
西南电子技术研究所,成都 610036西南电子技术研究所,成都 610036西南电子技术研究所,成都 610036西南电子技术研究所,成都 610036
信息技术与安全科学
数据关联跨时空数据关联多源异构数据关联强制检验证据增强
data associationcross-spatiotemporal data associationmulti-source heterogeneous data associationmandatory inspectionevidence augmentation
《电讯技术》 2026 (4)
647-653,7
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