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农业生产中机器视觉技术应用现状

Application status of machine vision technology in agricultural production

  • 摘要: 近年来,我国农业现代化进程显著加快,对农业机械提出向自动化、智能化方向迈进的发展要求。机器视觉技术作为智能农机核心,在智能农机转型与升级过程中发挥至关重要作用。系统梳理机器视觉技术在杂草识别、作物生长状态监测、农业机器人中的应用现状。机器视觉技术在当前农业应用场景中存在算法适应性有待提升、模型泛化能力相对不足、算法与农业机械之间协同配合程度较低,以及数据资源获取难度大、多样性不足等问题。基于此,提出未来机器视觉技术在农业领域应向多模态信息融合、轻量化与高效识别算法开发、数据增强与迁移学习,以及优化算法与各类农业机械协同适配性等方向发展。

     

    Abstract: In recent years, agricultural modernization process in China has significantly accelerated, and development requirements for agricultural machinery have been put forward to move forward with automation and intelligence.Machine vision technology as core of intelligent agricultural machinery, plays a crucial role in transformation and upgrading process of intelligent agricultural machinery.Current application status of machine vision technology in weed recognition, crop growth information monitoring, agricultural robots was systematically sorted out in research.It was found that in agricultural current application scenarios, machine vision technology faced several challenges, such as algorithm adaptability needing to be improved, model generalization ability being relatively insufficient, low coordination between algorithms and agricultural machinery, and data resources being difficult to obtain and insufficiently diversified.On this basis, future application of machine vision technology in agricultural field was proposed to be in multimodal information fusion, lightweight and efficient recognition algorithms, data augmentation and transfer learning, and algorithms optimization for collaborative adaptability with various types of agricultural machinery.

     

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