智能农业和精准农业中的计算机视觉:技术与应用

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY Artificial Intelligence in Agriculture Pub Date : 2024-06-25 DOI:10.1016/j.aiia.2024.06.004
Sumaira Ghazal , Arslan Munir , Waqar S. Qureshi
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引用次数: 0

摘要

在计算机视觉和人工智能(AI)尖端技术的推动下,通过数字化和自动化的融合,古老的耕作方式发生了转变,引发了一场农业革命。这场变革不仅有望提高生产率和促进经济增长,还有可能解决粮食安全和可持续发展等重要的全球性问题。本调查报告旨在全面了解基于视觉的智能系统在精准农业各方面的集成情况。通过对作物数字生命周期的关键领域进行详细讨论,本调查报告有助于加深对在具有挑战性的农业环境中实施视觉引导智能系统的复杂性的理解。本调查的重点是探索精准农业任务中广泛使用的成像和图像分析技术。本文首先讨论了数字农业中使用的各种作物指标。然后,本文阐述了成像和计算机视觉技术在精准农业中作物数字生命周期各个阶段的应用,如图像采集、图像拼接和摄影测量、图像分析、决策、处理和规划。在对精准农业中基于视觉的智能系统实施过程中涉及的相关术语和技术有了透彻的了解之后,调查报告最后概述了为实时部署完全自主的农场而实施通用计算机视觉模型所面临的挑战。
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Computer vision in smart agriculture and precision farming: Techniques and applications

The transformation of age-old farming practices through the integration of digitization and automation has sparked a revolution in agriculture that is driven by cutting-edge computer vision and artificial intelligence (AI) technologies. This transformation not only promises increased productivity and economic growth, but also has the potential to address important global issues such as food security and sustainability. This survey paper aims to provide a holistic understanding of the integration of vision-based intelligent systems in various aspects of precision agriculture. By providing a detailed discussion on key areas of digital life cycle of crops, this survey contributes to a deeper understanding of the complexities associated with the implementation of vision-guided intelligent systems in challenging agricultural environments. The focus of this survey is to explore widely used imaging and image analysis techniques being utilized for precision farming tasks. This paper first discusses various salient crop metrics used in digital agriculture. Then this paper illustrates the usage of imaging and computer vision techniques in various phases of digital life cycle of crops in precision agriculture, such as image acquisition, image stitching and photogrammetry, image analysis, decision making, treatment, and planning. After establishing a thorough understanding of related terms and techniques involved in the implementation of vision-based intelligent systems for precision agriculture, the survey concludes by outlining the challenges associated with implementing generalized computer vision models for real-time deployment of fully autonomous farms.

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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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