利用遥感土地利用和土地变化数据进行作物监测:使用预训练 CNN 模型的深度学习方法比较分析

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Min Peng , Yunxiang Liu , Asad Khan , Bilal Ahmed , Subrata K. Sarker , Yazeed Yasin Ghadi , Uzair Aslam Bhatti , Muna Al-Razgan , Yasser A. Ali
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引用次数: 0

摘要

在二十一世纪初气候动态迅速演变的背景下,气候变化与生物圈完整性之间的相互作用正变得日益重要。气候变化对生态系统的影响无处不在,这不仅体现在平均环境条件及其变异性的改变上,还体现在海洋酸化加剧和大气二氧化碳浓度升高等附带变化上。同时出现的生态压力因素(包括栖息地退化、失衡和破碎化)进一步加剧了这些气候转变。在此背景下,本研究深入探讨了先进的深度学习方法对卫星图像中的土地覆被进行分类的功效,并特别强调了对农业作物的监测。本研究利用了最先进的预训练卷积神经网络(CNN)架构,即 VGG16、MobileNetV2、DenseNet121 和 ResNet50,这些架构因其架构复杂性和在图像识别领域久经考验的能力而入选。研究框架包括结合增强技术的全面数据准备阶段、彻底的探索性数据分析(通过计算类权重来确定和解决类失衡问题)以及对具有定制分类层的 CNN 架构进行战略性微调,以适应土地覆被分类挑战的特殊性。在训练阶段和验证数据集上,都根据准确率和损失基准对模型的性能进行了严格评估,而防止过拟合的策略,如提前停止和自适应学习率修改,则是该方法的组成部分。研究结果阐明了利用预训练深度学习模型进行农业遥感的巨大潜力,证明了先进的 CNN 架构,尤其是 DenseNet121 和 ResNet50,在提高卫星图像作物类型分类准确性方面效果显著。这项研究为精准农业领域提供了宝贵的见解,倡导整合先进的图像识别技术来提高作物监测效率,从而实现更细致的农业决策和资源分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crop monitoring using remote sensing land use and land change data: Comparative analysis of deep learning methods using pre-trained CNN models

In the context of the rapidly evolving climate dynamics of the early twenty-first century, the interplay between climate change and biospheric integrity is becoming increasingly critical. The pervasive impact of climate change on ecosystems is manifested not only through alterations in average environmental conditions and their variability but also through ancillary shifts such as escalated oceanic acidification and heightened atmospheric CO2 levels. These climatic transformations are further compounded by concurrent ecological stressors, including habitat degradation, defaunation, and fragmentation. Against this backdrop, this study delves into the efficacy of advanced deep learning methodologies for the classification of land cover from satellite imagery, with a particular emphasis on agricultural crop monitoring. The study leverages state-of-the-art pre-trained Convolutional Neural Network (CNN) architectures, namely VGG16, MobileNetV2, DenseNet121, and ResNet50, selected for their architectural sophistication and proven competence in image recognition domains. The research framework encompasses a comprehensive data preparation phase incorporating augmentation techniques, a thorough exploratory data analysis to pinpoint and address class imbalances through the computation of class weights, and the strategic fine-tuning of CNN architectures with tailored classification layers to suit the specificities of land cover classification challenges. The models' performance was rigorously evaluated against benchmarks of accuracy and loss, both during the training phase and on validation datasets, with preventative strategies against overfitting, such as early stopping and adaptive learning rate modifications, being integral to the methodology. The findings illuminate the considerable potential of leveraging pre-trained deep learning models for remote sensing in agriculture, demonstrating that advanced CNN architectures, particularly DenseNet121 and ResNet50, are notably effective in enhancing crop type classification accuracy from satellite imagery. This study contributes valuable insights to the field of precision agriculture, advocating for the integration of sophisticated image recognition technologies to bolster crop monitoring efficacy, thereby enabling more nuanced agricultural decision-making and resource allocation.

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CiteScore
7.20
自引率
4.30%
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