In the evolution of agriculture to its next stage, Agriculture 5.0, artificial intelligence will play a central role. Controlled-environment agriculture, or CEA, is a special form of urban and suburban agricultural practice that offers numerous economic, environmental, and social benefits, including shorter transportation routes to population centers, reduced environmental impact, and increased productivity. Due to its ability to control environmental factors, CEA couples well with computer vision (CV) in the adoption of real-time monitoring of the plant conditions and autonomous cultivation and harvesting. The objective of this paper is to familiarize CV researchers with agricultural applications and agricultural practitioners with the solutions offered by CV. We identify five major CV applications in CEA, analyze their requirements and motivation, and survey the state of the art as reflected in 68 technical papers using deep learning methods. In addition, we discuss five key subareas of computer vision and how they related to these CEA problems, as well as nine vision-based CEA datasets. We hope the survey will help researchers quickly gain a bird-eye view of the striving research area and will spark inspiration for new research and development.
翻译:在农业进入下一阶段的过程中,农业5.0,人工智能将发挥核心作用。受控环境农业(即CEA)是一种特殊形式的城市和郊区农业做法,提供许多经济、环境和社会效益,包括缩短通往人口中心的交通路线、减少环境影响和提高生产力。由于它有能力控制环境因素,CEA夫妇在采用实时监测植物条件和自主种植和收获时,都具有计算机愿景。本文的目的是让CV研究人员熟悉农业应用和农业从业人员的CV解决方案。我们确定CEA的五大CV应用程序,分析其要求和动力,并用深层学习方法调查68份技术文件所反映的艺术状况。此外,我们讨论了计算机愿景的五个重要子领域及其与CEA问题的关系,以及九个基于愿景的CEA数据集。我们希望调查将有助于研究人员迅速获得对研究领域进行探索的鸟眼视角,并将激发新的研究与发展的灵感。