RoboWeedSupport——展示了一种基于云的系统,弥合了现场杂草检查和决策支持系统之间的差距

P. Rydahl, N.-P. Jensen, M. Dyrmann, P. H. Nielsen, R. Jørgensen
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引用次数: 6

摘要

为了开发减少20-40%除草剂使用的潜力,正如使用决策支持系统(DSS)所记录的那样,人工实地检查的要求构成了主要障碍,作物顾问已经收集并人工分析了大量杂草侵扰的数字图片。结果传递给:1)DSS,确定控制需求并连接,优化控制选项,返回控制选项;2)卷积神经网络,通过这种方式进行训练,实现对未来图像的自动分析,从而支持特定领域和特定地点的综合杂草管理。
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RoboWeedSupport - Presentation of a cloud based system bridging the gap between in-field weed inspections and decision support systems
In order to exploit potentials of 20–40% reduction of herbicide use, as documented by use of Decision Support Systems (DSS), where requirements for manual field inspection constitute a major obstacle, large numbers of digital pictures of weed infestations have been collected and analysed manually by crop advisors. Results were transferred to: 1) DSS, which determined needs for control and connected, optimized options for control returned options for control and 2) convolutional, neural networks, which in this way were trained to enable automatic analysis of future pictures, which support both field- and site-specific integrated weed management.
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Proceedings of the British Society of Animal Science Proceedings of the XIIIth International Symposium on Ruminant Physiology (ISRP 2019) Proceedings of the British Society of Animal Science Proceedings of the Seventeenth Biennial Conference of the Australasian Pig Science Association (APSA) Proceedings of the 9th Workshop on Modelling Nutrient Digestion and Utilization in Farm Animals (MODNUT)
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