Remote Sensing Crop Water Stress Determination Using CNN-ViT Architecture

AI Pub Date : 2024-05-09 DOI:10.3390/ai5020033
Kawtar Lehouel, Chaima Saber, Mourad Bouziani, Reda Yaagoubi
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Abstract

Efficiently determining crop water stress is vital for optimising irrigation practices and enhancing agricultural productivity. In this realm, the synergy of deep learning with remote sensing technologies offers a significant opportunity. This study introduces an innovative end-to-end deep learning pipeline for within-field crop water determination. This involves the following: (1) creating an annotated dataset for crop water stress using Landsat 8 imagery, (2) deploying a standalone vision transformer model ViT, and (3) the implementation of a proposed CNN-ViT model. This approach allows for a comparative analysis between the two architectures, ViT and CNN-ViT, in accurately determining crop water stress. The results of our study demonstrate the effectiveness of the CNN-ViT framework compared to the standalone vision transformer model. The CNN-ViT approach exhibits superior performance, highlighting its enhanced accuracy and generalisation capabilities. The findings underscore the significance of an integrated deep learning pipeline combined with remote sensing data in the determination of crop water stress, providing a reliable and scalable tool for real-time monitoring and resource management contributing to sustainable agricultural practices.
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利用 CNN-ViT 架构进行作物水分胁迫遥感测定
有效确定作物水分胁迫对于优化灌溉方法和提高农业生产力至关重要。在这一领域,深度学习与遥感技术的协同作用提供了重大机遇。本研究介绍了一种创新的端到端深度学习管道,用于田间作物水分测定。这包括以下内容:(1) 利用大地遥感卫星 8 号图像创建作物水分胁迫注释数据集,(2) 部署独立的视觉转换器模型 ViT,(3) 实施建议的 CNN-ViT 模型。通过这种方法,可以对 ViT 和 CNN-ViT 这两种架构在准确确定作物水分胁迫方面的效果进行比较分析。我们的研究结果表明,与独立的视觉转换器模型相比,CNN-ViT 框架非常有效。CNN-ViT 方法表现出卓越的性能,凸显了其更高的准确性和泛化能力。研究结果强调了集成深度学习管道与遥感数据相结合在确定作物水分胁迫方面的重要性,为实时监测和资源管理提供了可靠、可扩展的工具,有助于可持续农业实践。
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