TOMMicroNet:基于智能手机的卷积神经网络,用于番茄生物和非生物植物健康问题的显微检测。

IF 2.6 2区 农林科学 Q2 PLANT SCIENCES Phytopathology Pub Date : 2024-10-30 DOI:10.1094/PHYTO-04-23-0123-R
Sruthi Sentil, Manoj Choudhary, Mubin Tirsaiwala, Sandeep Rvs, Vignesh Mahalingam Suresh, Chacko Jacob, Mathews Paret
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引用次数: 0

摘要

基于图像的植物病害检测和分类对精准农业的发展越来越重要。我们以番茄为例,这是一种高价值作物,支撑着世界各地许多农民的生计。许多生物和非生物植物健康问题阻碍了这种作物的高效生产,而许多偏远地区无法获得基于实验室的诊断。及早发现这些植物健康问题对于高效、准确地采取应对措施至关重要,这促使人们探索田间检测的替代方法。考虑到低成本智能手机的可用性,利用手机图像进行基于人工智能的分类不失为一种实用的选择。本研究介绍了一种可安装在智能手机上的 30 倍显微镜,用于生成新颖的番茄显微成像数据集,该数据集包含 8500 张图像,代表了 34 种番茄植物叶片上下两侧以及番茄果实表面的状况。我们介绍了 TOMMicroNet,这是一个经过训练的 14 层卷积神经网络(CNN),可对植物的生物和非生物健康问题进行分类,我们还将其与现有的六个预训练 CNN 模型进行了比较。我们比较了两种为训练 TOMMicroNet 而对数据进行分组的方法,一种是一次性呈现所有数据,另一种是根据植物的三个部分将数据分成子集。根据交叉验证和 F1 分数对配置进行比较后,我们确定 TOMMicroNet 在完整数据集上训练时性能最高,在训练数据集和外部数据集上的分类准确率均达到 95%。鉴于 TOMMicroNet 在处理陌生数据时的能力,这种方法有望用于识别植物健康问题。
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TOMMicroNet: Convolutional Neural Networks for Smartphone-Based Microscopic Detection of Tomato Biotic and Abiotic Plant Health Issues.

The image-based detection and classification of plant diseases has become increasingly important to the development of precision agriculture. We consider the case of tomato, a high-value crop supporting the livelihoods of many farmers around the world. Many biotic and abiotic plant health issues impede the efficient production of this crop, and laboratory-based diagnostics are inaccessible in many remote regions. Early detection of these plant health issues is essential for efficient and accurate response, prompting exploration of alternatives for field detection. Considering the availability of low-cost smartphones, artificial intelligence-based classification facilitated by mobile phone imagery can be a practical option. This study introduces a smartphone-attachable 30× microscopic lens, used to produce the novel tomato microimaging data set of 8,500 images representing 34 tomato plant conditions on the upper and lower sides of leaves as well as on the surface of tomato fruits. We introduce TOMMicroNet, a 14-layer convolutional neural network (CNN) trained to classify biotic and abiotic plant health issues, and we compare it against six existing pretrained CNN models. We compared two separate pipelines of grouping data for training TOMMicroNet, either presenting all data at once or separating the data into subsets based on the three parts of the plant. Comparing configurations based on cross-validation and F1 scores, we determined that TOMMicroNet attained the highest performance when trained on the complete data set, with 95% classification accuracy on both training and external data sets. Given TOMMicroNet's capabilities when presented with unfamiliar data, this approach has potential for the identification of plant health issues.

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来源期刊
Phytopathology
Phytopathology 生物-植物科学
CiteScore
5.90
自引率
9.40%
发文量
505
审稿时长
4-8 weeks
期刊介绍: Phytopathology publishes articles on fundamental research that advances understanding of the nature of plant diseases, the agents that cause them, their spread, the losses they cause, and measures that can be used to control them. Phytopathology considers manuscripts covering all aspects of plant diseases including bacteriology, host-parasite biochemistry and cell biology, biological control, disease control and pest management, description of new pathogen species description of new pathogen species, ecology and population biology, epidemiology, disease etiology, host genetics and resistance, mycology, nematology, plant stress and abiotic disorders, postharvest pathology and mycotoxins, and virology. Papers dealing mainly with taxonomy, such as descriptions of new plant pathogen taxa are acceptable if they include plant disease research results such as pathogenicity, host range, etc. Taxonomic papers that focus on classification, identification, and nomenclature below the subspecies level may also be submitted to Phytopathology.
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