When crops meet machine vision: A review and development framework for a low-cost nondestructive online monitoring technology in agricultural production

Xinyue Lv , Xiaolong Zhang , Hairong Gao , Tingting He , Zhiyuan Lv , Lili Zhangzhong
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Abstract

The Food and Agriculture Organization (FAO) has indicated that digital technology is key for improving the resilience of food systems. Smart models have been developed for agricultural water, fertilizer, medicine, and environmental regulations, in which data-driven quantity and precision are crucial. However, data acquisition methods based on manual observation cannot meet the requirements of large amount of real-time data. The development of machine vision provides a new method for online non-destructive monitoring. We discuss algorithm types and evaluation methods for machine vision applications based on RGB images considering their low cost and easy access. This paper reviews progress in the application field, covering the entire process from planting to postharvest, and the application of sensing and control equipment in agricultural practice. Finally, aiming at the problems such as lack of agricultural data set, poor model portability, and large model size, a new algorithm framework based on “data layer - model layer - deployment layer,” multi-parameter “environmental data - image data” and multi-method fusion of “mechanism model - machine vision” was proposed to provide a basis for low-cost nondestructive online crop monitoring.

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当农作物遇到机器视觉:农业生产中低成本无损在线监测技术的审查和开发框架
联合国粮食及农业组织(FAO)指出,数字技术是提高粮食系统复原力的关键。针对农业用水、施肥、用药和环境监管开发了智能模型,其中数据驱动的数量和精度至关重要。然而,基于人工观察的数据采集方法无法满足大量实时数据的要求。机器视觉的发展为在线无损监测提供了一种新方法。考虑到 RGB 图像的低成本和易获取性,我们讨论了基于 RGB 图像的机器视觉应用算法类型和评估方法。本文回顾了应用领域的进展,涵盖了从种植到收获后的整个过程,以及传感和控制设备在农业实践中的应用。最后,针对农业数据集缺乏、模型可移植性差、模型体积大等问题,提出了基于 "数据层-模型层-部署层"、多参数 "环境数据-图像数据 "和 "机制模型-机器视觉 "多方法融合的新算法框架,为低成本无损在线作物监测提供了基础。
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