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arXiv 提交日期: 2026-01-29
📄 Abstract - Token Entropy Regularization for Multi-modal Antenna Affiliation Identification

Accurate antenna affiliation identification is crucial for optimizing and maintaining communication networks. Current practice, however, relies on the cumbersome and error-prone process of manual tower inspections. We propose a novel paradigm shift that fuses video footage of base stations, antenna geometric features, and Physical Cell Identity (PCI) signals, transforming antenna affiliation identification into multi-modal classification and matching tasks. Publicly available pretrained transformers struggle with this unique task due to a lack of analogous data in the communications domain, which hampers cross-modal alignment. To address this, we introduce a dedicated training framework that aligns antenna images with corresponding PCI signals. To tackle the representation alignment challenge, we propose a novel Token Entropy Regularization module in the pretraining stage. Our experiments demonstrate that TER accelerates convergence and yields significant performance gains. Further analysis reveals that the entropy of the first token is modality-dependent. Code will be made available upon publication.

顶级标签: multi-modal model training systems
详细标签: antenna identification cross-modal alignment entropy regularization communication networks transformer pretraining 或 搜索:

用于多模态天线归属识别的令牌熵正则化方法 / Token Entropy Regularization for Multi-modal Antenna Affiliation Identification


1️⃣ 一句话总结

这篇论文提出了一种结合基站视频、天线几何特征和无线信号的新型多模态方法,并引入令牌熵正则化技术来有效对齐不同模态的数据,从而自动、准确地识别通信网络中天线的归属关系,替代了传统低效的人工巡检方式。

源自 arXiv: 2601.21280