基于深度学习的番茄叶片灌溉状态检测方法

Tej Bahadur Shahi;Chiranjibi Sitaula;Krishna Prasad Bhandari;Shobha Poudel;Rupesh Bhandari;Ravindra Mishra;Bharat Kumar Sharma;Bhogendra Mishra
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引用次数: 0

摘要

气候变化的影响,可以说是全球变暖和随之而来的干旱,是影响作物生产力的最严重的农业挑战之一。因此,有效的水资源管理对农业实践至关重要。对植物叶片的分析提供了一个通过自动化解决方案来衡量灌溉状况的机会,以鼓励农民更广泛地采用。目前,通过叶片分析检测番茄植株灌溉状况的人工智能方法在文献中明显缺失。为了解决这一差距,我们提出了一种基于端到端深度学习(DL)的新方法,该方法受到ResNet-50模型的启发。我们的模型修剪了不必要的块,减少了较大的核,极大地简化了模型,以更好地适应与番茄灌溉状况相关的叶片图像数据集。我们使用新开发的数据集对我们的方法进行了评估,发现与预训练的DL模型相比,我们的方法表现出色(Precision: 99.05%, Recall: 99.01%, F1-score: 99.01%, mean-average F1: 98.98%, weighted-average F1: 98.95%, Kappa: 98.61%,准确率:98.90%)。此外,我们的模型具有更少的参数和更低的浮点运算(FLOPs),提高了其效率,并表明其具有更具成本效益和生产力的灌溉管理实践的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-Based Method for Irrigation Status Detection in Tomato Using Plant Leaves
The impact of climate change, arguably global warming and resulting drought, is one of the most escalating agricultural challenges affecting crop productivity. Therefore, effective water management is critical in agricultural practices. The analysis of plant leaves presents an opportunity to gauge irrigation status through automated solutions to encourage broader adoption among farmers. Currently, there is a notable absence of AI methods in the literature for detecting tomato plant irrigation status through leaf analysis. Addressing this gap, we propose a novel end-to-end deep learning (DL)-based method, inspired by the ResNet-50 model. Our model trims unnecessary blocks and reduces larger kernels, significantly streamlining the model to better fit with the leaf image dataset related to the tomato irrigation status. We evaluate our method using a newly developed dataset and find outstanding performance (Precision: 99.05%, Recall: 99.01%, F1-score: 99.01%, mean-average F1: 98.98%, weighted-average F1: 98.95%, Kappa: 98.61%, accuracy: 98.90%) while comparing with the pretrained DL models. Additionally, our model has fewer parameters and lower floating-point operations (FLOPs), enhancing its efficiency and suggesting its potential for more cost-effective and productive irrigation management practices.
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CiteScore
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