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Sensing and Automation Technologies for Ornamental Nursery Crop Production: Current Status and Future Prospects

期刊

SENSORS
卷 23, 期 4, 页码 -

出版社

MDPI
DOI: 10.3390/s23041818

关键词

agricultural mechanization; artificial intelligence; computer vision; digital agriculture; internet-of-things; plant biometrics; smart irrigation; smart spraying; stress detection

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The ornamental crop industry is important for the US economy, but faces challenges caused by rising labor and agricultural costs. Sensing and automation technologies have been introduced to reduce labor requirements and improve efficiency. This article reviews current and prospective technologies, such as sensors, computer vision, AI, ML, IoT, and robotics, for ornamental crop production.
The ornamental crop industry is an important contributor to the economy in the United States. The industry has been facing challenges due to continuously increasing labor and agricultural input costs. Sensing and automation technologies have been introduced to reduce labor requirements and to ensure efficient management operations. This article reviews current sensing and automation technologies used for ornamental nursery crop production and highlights prospective technologies that can be applied for future applications. Applications of sensors, computer vision, artificial intelligence (AI), machine learning (ML), Internet-of-Things (IoT), and robotic technologies are reviewed. Some advanced technologies, including 3D cameras, enhanced deep learning models, edge computing, radio-frequency identification (RFID), and integrated robotics used for other cropping systems, are also discussed as potential prospects. This review concludes that advanced sensing, AI and robotic technologies are critically needed for the nursery crop industry. Adapting these current and future innovative technologies will benefit growers working towards sustainable ornamental nursery crop production.

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