大豆监测与管理的深度学习

J. Barbedo
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引用次数: 0

摘要

人工智能比以往任何时候都更多地出现在社会的几乎所有领域。这在很大程度上是由于越来越强大的深度学习模型的发展,这些模型能够解决以前无法解决的分类问题。因此,有大量的科学文章将深度学习应用于大量不同的问题。自2010年代初这种类型的技术开始以来,对农业深度学习的兴趣一直在不断增长。大豆作为最重要的农产品之一,经常成为这方面努力的目标。在这种情况下,跟踪不断发展的技术状态可能具有挑战性。这篇综述描述了深度学习应用于大豆作物的现状,详细介绍了迄今为止取得的主要进展,更重要的是,对仍然存在的主要挑战和研究差距进行了深入分析。最终目标是促进从学术研究到在该领域的困难条件下实际工作的技术的飞跃。
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Deep Learning for Soybean Monitoring and Management
Artificial intelligence is more present than ever in virtually all sectors of society. This is in large part due to the development of increasingly powerful deep learning models capable of tackling classification problems that were previously untreatable. As a result, there has been a proliferation of scientific articles applying deep learning to a plethora of different problems. The interest in deep learning in agriculture has been continuously growing since the inception of this type of technique in the early 2010s. Soybeans, being one of the most important agricultural commodities, has frequently been the target of efforts in this regard. In this context, it can be challenging to keep track of a constantly evolving state of the art. This review characterizes the current state of the art of deep learning applied to soybean crops, detailing the main advancements achieved so far and, more importantly, providing an in-depth analysis of the main challenges and research gaps that still remain. The ultimate goal is to facilitate the leap from academic research to technologies that actually work under the difficult conditions found in the the field.
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