Industrial Internet of Things (IoT) and 3D Reconstruction Empowered Smart Agriculture System

Zhenyu Ma, R. Rayhana, Zheng Liu, G. Xiao, Y. Ruan, J. Sangha
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引用次数: 1

Abstract

Smart agriculture is a new agricultural production mode and is considered a potential solution for food supply issues under current limited land space conditions. The application of the Internet of Things (IoT) in smart agriculture can effectively increase food production with relatively low labor costs by deploying various wireless communication sensors in the field to collect plant information during the agricultural process. This paper developed an extendable IoT based sensor system for smart agriculture applications. The proposed sensing system can acquire real-time plant information through its plant environment and plant phenotyping monitoring process. The plant environment monitoring process can collect real-time plant environmental data through multiple wireless environment measuring sensors. At the same time, the plant phenotyping monitoring process can achieve plant height monitoring with the root-mean-square error (RMSE) of 0.051 m and the mean absolute error (MAE) of 0.049 m through remote RGB-D (red, green, blue plus depth data) cameras and 3D reconstruction method. This study shows that the proposed system can provide valuable real-time plant information for farmers’ decision-making.
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工业物联网(IoT)和3D重建支持的智能农业系统
智慧农业是一种新的农业生产模式,被认为是在当前有限的土地空间条件下解决粮食供应问题的潜在解决方案。物联网(IoT)在智慧农业中的应用,通过在田间部署各种无线通信传感器,采集农业过程中的植物信息,可以在劳动力成本相对较低的情况下,有效地提高粮食产量。本文开发了一种可扩展的基于物联网的智能农业传感器系统。该传感系统可以通过对植物环境和植物表型的监测过程实时获取植物信息。植物环境监测过程可以通过多个无线环境测量传感器实时采集植物环境数据。同时,植物表型监测过程可以通过远程RGB-D(红、绿、蓝加深度数据)相机和三维重建方法实现植物高度监测,均方根误差(RMSE)为0.051 m,平均绝对误差(MAE)为0.049 m。研究表明,该系统可以为农民的决策提供有价值的实时植物信息。
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