OrchLoc:通过单个 LoRa 网关和基于生成式扩散模型的指纹识别进行园内定位

Kang Yang, Yuning Chen, Wan Du
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引用次数: 1

摘要

在果园中,机器人的树级定位对于精准疾病管理和定向营养分配等智能农业应用至关重要。然而,先前的解决方案无法提供足够的精度。我们开发的系统是基于指纹识别的定位系统,只需一个 LoRa 网关就能提供树级精度。我们提取通过八个信道测量的信道状态信息 (CSI) 作为指纹。为了避免为建立和更新指纹数据库而进行劳动密集型现场勘测,我们设计了一个 CSI 生成模型(CGM),用于学习 CSI 与其对应位置之间的关系。利用来自静态 LoRa 传感器节点的 CSI 对 CGM 进行微调,以建立和更新指纹数据库。在两个果园中进行的大量实验验证了我们的系统在以最小的开销实现树级定位和提高机器人导航精度方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OrchLoc: In-Orchard Localization via a Single LoRa Gateway and Generative Diffusion Model-based Fingerprinting
In orchards, tree-level localization of robots is critical for smart agriculture applications like precision disease management and targeted nutrient dispensing. However, prior solutions cannot provide adequate accuracy. We develop our system, a fingerprinting-based localization system that can provide tree-level accuracy with only one LoRa gateway. We extract channel state information (CSI) measured over eight channels as the fingerprint. To avoid labor-intensive site surveys for building and updating the fingerprint database, we design a CSI Generative Model (CGM) that learns the relationship between CSIs and their corresponding locations. The CGM is fine-tuned using CSIs from static LoRa sensor nodes to build and update the fingerprint database. Extensive experiments in two orchards validate our system’s effectiveness in achieving tree-level localization with minimal overhead and enhancing robot navigation accuracy.
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