边缘物联网和人工智能的远程作物遥感

Panagiotis Savvidis, G. Papakostas
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摘要

本文目前的工作受到边缘计算、机器学习、计算机视觉和物联网(IoT)概念的启发。这种协同作用用于监测苹果园产量,更具体地说,用于农业领域苹果收获目的的检测和信息提取。上述概念利用低功耗信息中继的手段,使用LoRaWAN(低功耗广域网)协议,旨在将电池操作的“事物”与区域或全球拓扑中的互联网连接起来。图像采集和数据在远离电网的电池驱动的边缘设备上进行处理。在配备适当摄像机并使用定制训练权重的单板计算机(SBC)中实现完整的YoloV4框架的提议似乎是一个可行的解决方案。在复杂的密集环境中,该方法的苹果检测性能高达66.89%。这些初步结果揭示了利用人工智能和物联网技术的这种边缘计算方法的可行性。
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Remote Crop Sensing with IoT and AI on the Edge
The current work in this paper inspired by the concepts of Edge Computing, Machine Learning, Computer Vision and Internet of Things (IoT). This synergy is used for monitoring apple orchard yield and more specific the detection and information extraction for apple harvesting purposes in the agriculture field. The above concept utilizes the means for a low power information relay using LoRaWAN (Low Power Wide Area Network) protocol designed to connect battery operated “things” with the internet in regional or global topology. Image acquisition and data are processed on a battery driven edge device away from the grid and on site. The proposition implementing a full YoloV4 framework in a single board computer (SBC) equipped with a proper camera and by using custom-trained weights seems to be a feasible solution. The performance of the proposed approach for good apple detection is up to 66.89% for complex dense environments. These preliminary results reveal the feasibility of this edge computing approach utilizing Artificial Intelligence and IoT technologies.
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