利用前沿深度学习技术检测大豆作物枯萎情况并进行分类

Myung Hwan Na, In Seop Na
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引用次数: 0

摘要

背景:大豆枯萎是一种受外部压力影响的植物健康指标,本文利用带有预训练模型的卷积神经网络(CNN),在大豆枯萎分类中采用了深度学习技术。通过研究大豆枯萎的相关性、农业部门的演变以及在作物健康监测中的应用,本文强调了深度学习在农业领域的应用前景。方法:研究中使用 CNN 对大豆枯萎进行分类,特别关注 VGG16 预训练模型。利用深度学习解释复杂数据模式的能力,实现智能、准确的枯萎检测。结合最新进展并应对相关挑战,开发了一个专为大豆枯萎定制的智能检测系统。结果:以 VGG16 为代表的 CNN 模型在区分大豆健康叶片和枯萎叶片方面的总体准确率达到 76%,标志着大豆作物健康管理发生了变革性转变。在最先进的 CNN 技术的支持下,该方法提供了一个精确、高效和可持续的解决方案,推动了大豆种植实践的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Classification of Wilting in Soybean Crop using Cutting-edge Deep Learning Techniques
Background: This paper employs deep learning in the classification of soybean wilting, a plant health indicator affected by external pressures, using a Convolutional Neural Network (CNN) with a pre-trained model. It highlights the promise of deep learning in agriculture by examining the relevance of wilting, evolution in the agricultural sector and applications in crop wellness monitoring. Methods: A CNN is used in the study to classify soybean withering, with special attention to the VGG16 pre-trained model. Deep learning’s ability to interpret complex data patterns is harnessed for intelligent and accurate wilting detection. A smart detection system tailored for soybean wilting is developed, incorporating recent advancements and addressing associated challenges. Result: The CNN model, notably VGG16, achieves 76% overall accuracy in distinguishing healthy and wilted soybean leaves, signifying a transformative shift in soybean crop health management. The approach offers a precise, efficient and sustainable solution supported by state-of-the-art CNN technology, advancing soybean cultivation practices.
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