Deep learning techniques to classify agricultural crops through UAV imagery: a review.

Bone Pub Date : 2022-01-01 Epub Date: 2022-03-05 DOI:10.1007/s00521-022-07104-9
Abdelmalek Bouguettaya, Hafed Zarzour, Ahmed Kechida, Amine Mohammed Taberkit
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Abstract

During the last few years, Unmanned Aerial Vehicles (UAVs) technologies are widely used to improve agriculture productivity while reducing drudgery, inspection time, and crop management cost. Moreover, they are able to cover large areas in a matter of a few minutes. Due to the impressive technological advancement, UAV-based remote sensing technologies are increasingly used to collect valuable data that could be used to achieve many precision agriculture applications, including crop/plant classification. In order to process these data accurately, we need powerful tools and algorithms such as Deep Learning approaches. Recently, Convolutional Neural Network (CNN) has emerged as a powerful tool for image processing tasks achieving remarkable results making it the state-of-the-art technique for vision applications. In the present study, we reviewed the recent CNN-based methods applied to the UAV-based remote sensing image analysis for crop/plant classification to help researchers and farmers to decide what algorithms they should use accordingly to their studied crops and the used hardware. Fusing different UAV-based data and deep learning approaches have emerged as a powerful tool to classify different crop types accurately. The readers of the present review could acquire the most challenging issues facing researchers to classify different crop types from UAV imagery and their potential solutions to improve the performance of deep learning-based algorithms.

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通过无人机图像对农作物进行分类的深度学习技术:综述。
在过去几年里,无人驾驶飞行器(UAV)技术被广泛应用于提高农业生产率,同时减少繁重的劳动、检查时间和作物管理成本。此外,它们还能在几分钟内覆盖大片区域。由于技术进步显著,基于无人机的遥感技术越来越多地用于收集有价值的数据,这些数据可用于实现许多精准农业应用,包括作物/植物分类。为了准确处理这些数据,我们需要强大的工具和算法,如深度学习方法。最近,卷积神经网络(CNN)已成为图像处理任务的强大工具,取得了令人瞩目的成果,成为视觉应用领域最先进的技术。在本研究中,我们回顾了最近应用于基于无人机的作物/植物分类遥感图像分析的基于卷积神经网络的方法,以帮助研究人员和农民根据他们研究的作物和使用的硬件来决定应该使用哪种算法。融合不同的无人机数据和深度学习方法已成为准确分类不同作物类型的有力工具。通过本综述,读者可以了解研究人员在利用无人机图像对不同作物类型进行分类时所面临的最具挑战性的问题,以及提高基于深度学习的算法性能的潜在解决方案。
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