Leveraging Machine Learning for Weed Management and Crop Enhancement: Vineyard Flora Classification

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Algorithms Pub Date : 2023-12-31 DOI:10.3390/a17010019
Ana Corceiro, Nuno Pereira, Khadijeh Alibabaei, Pedro D. Gaspar
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Abstract

The global population’s rapid growth necessitates a 70% increase in agricultural production, posing challenges exacerbated by weed infestation and herbicide drawbacks. To address this, machine learning (ML) models, particularly convolutional neural networks (CNNs), are employed in precision agriculture (PA) for weed detection. This study focuses on testing CNN architectures for image classification tasks using the PyTorch framework, emphasizing hyperparameter optimization. Four groups of experiments were carried out: the first one trained all the PyTorch architectures, followed by the creation of a baseline, the evaluation of a new and extended dataset in the best models, and finally, the test phase was conducted using a web application developed for this purpose. Of 80 CNN sub-architectures tested, the MaxVit, ShuffleNet, and EfficientNet models stand out, achieving a maximum accuracy of 96.0%, 99.3%, and 99.3%, respectively, for the first test phase of PyTorch classification architectures. In addition, EfficientNet_B1 and EfficientNet_B5 stood out compared to all other models. During experiment 3, with a new dataset, both models achieved a high accuracy of 95.13% and 94.83%, respectively. Furthermore, in experiment 4, both EfficientNet_B1 and EfficientNet_B5 achieved a maximum accuracy of 96.15%, the highest one. ML models can help to automate crop problem detection, promote organic farming, optimize resource use, aid precision farming, reduce waste, boost efficiency, and contribute to a greener, sustainable agricultural future.
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利用机器学习进行杂草管理和作物增产:葡萄园植物分类
全球人口的快速增长要求农业产量增加 70%,而杂草丛生和除草剂的缺点加剧了这一挑战。为解决这一问题,机器学习(ML)模型,尤其是卷积神经网络(CNN),被用于精准农业(PA)中的杂草检测。本研究的重点是使用 PyTorch 框架测试用于图像分类任务的 CNN 架构,强调超参数优化。共进行了四组实验:第一组对所有 PyTorch 架构进行了训练,随后创建了基线,对最佳模型中的新扩展数据集进行了评估,最后使用为此开发的网络应用程序进行了测试阶段。在测试的 80 个 CNN 子体系结构中,MaxVit、ShuffleNet 和 EfficientNet 模型脱颖而出,在 PyTorch 分类体系结构的第一个测试阶段分别达到了 96.0%、99.3% 和 99.3% 的最高准确率。此外,与其他所有模型相比,EfficientNet_B1 和 EfficientNet_B5 也表现突出。在使用新数据集的实验 3 中,两个模型的准确率分别达到了 95.13% 和 94.83%。此外,在实验 4 中,EfficientNet_B1 和 EfficientNet_B5 都达到了 96.15% 的最高准确率。ML 模型有助于自动检测作物问题、推广有机农业、优化资源利用、辅助精准农业、减少浪费、提高效率,并为实现更加绿色、可持续的农业未来做出贡献。
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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