卷积神经网络在植物病害诊断物联网机器人系统中的应用

Apostolos Xenakis, Georgios Papastergiou, V. Gerogiannis, G. Stamoulis
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引用次数: 8

摘要

植物病害是影响绿色产品质量和农业生产力的主要威胁。农学家和农民在早期发现植物病害和控制其潜在的生产损害方面经常遇到很大的困难。因此,对于利益相关者来说,利用最先进的技术在植物生长的早期阶段诊断植物病害,考虑适当的行动,避免进一步的经济损失是非常重要的。人工智能(AI)技术、现场传感器、数据分析和推理算法是一些有助于植物早期疾病诊断的现代工具。在本文中,我们提出了一种植物疾病诊断支持系统(DDSS),该系统利用物联网平台控制轻型机器人系统。DDSS采用卷积神经网络学习算法进行植物病害的早期诊断和分类。该系统可以帮助农民采取适当的精准农业行动,更好地控制他们的生产。根据我们的演示案例研究,所提出的DDSS的分类成功率约为98%。
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Applying a Convolutional Neural Network in an IoT Robotic System for Plant Disease Diagnosis
Plant diseases are major threat to green product quality and agricultural productivity. Agronomists and farmers often encounter great difficulties in early detection of plant diseases and controlling their potential production damages. Thus, it is of great importance for stakeholders to diagnose plant diseases at very early stages of plant growing by exploiting state-of-the art technologies, consider appropriate actions and avoid further economic losses. Artificial Intelligence (AI) techniques, field sensors, data analytics and inference algorithms are some contemporary tools which could be helpful for early plant disease diagnosis. In this paper, we present a plant Disease Diagnosis Support System (DDSS) that utilizes an Internet of Things platform to control a lightweight robotic system. The DDSS applies a Convolution Neural Network learning algorithm to perform early plant disease diagnosis and classification. The system can help farmers to apply appropriate precision agriculture actions and better control their production. The proposed DDSS achieves around 98% success classification rate, according to our demonstration case study.
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