利用机器学习技术识别农田杂草

Chepati Dhana Lakshmi, Gajjala Satish Kumar Reddy, Chukka Yaswanth Kumar, Chinta Mounika, T. Ravi Sekhar
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引用次数: 0

摘要

杂草与作物争夺水分、养分和阳光,这是对作物生长最有害的制约因素之一。它们还对农业产出构成威胁。未来几年,杂草和害虫造成的全球生产力损失可能会增加。使用除草剂喷洒,特别是在杂草丛生的田地,是一种有效的方法来处理这个问题。为了正确部署杂草控制系统,必须准确准确地检测杂草。然而,传统的杂草管理技术需要花费很长时间和大量的人力资源,并且可能对环境产生不利影响。为了解决这个问题,一种名为自动杂草管理的模型应运而生,它利用深度学习和机器学习方法来解决这些问题。这种方法提高了农业生产力,减少了除草剂。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weed Identification in Agricultural Fields Using Machine Learning Techniques
Weeds compete with crops for water, nutrients, and sunshine, which is one of the most detrimental restraints on crop development. They also constitute a danger to agricultural output. The loss of worldwide productivity due to weeds and pests is likely to rise over the next few years. Using herbicide spray particularly in the field where the weeds are present is an efficient technique to manage the problem. For the weed control system to be properly deployed, weeds must be accurately and precisely detected. Traditional weed management techniques, however, take a long time and a lot of human resources, and they may have an adverse effect on the environment. To overcome this a model called Automatic weed management, a potential remedy that makes use of deep learning and machine learning approaches, has emerged to deal with these issues. This method increases agricultural productivity and reduces herbicides.
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