A Comprehensive Survey on Machine Learning and Deep Learning Techniques for Crop Disease Prediction in Smart Agriculture

Chatla Subbarayudu, Mohan Kubendiran
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引用次数: 0

Abstract

Diseases caused by bacteria, fungi, and viruses are a problem for many crops. Farmers have challenges when trying to evaluate their crops daily by manual inspection across all forms of agriculture. Also, it is difficult to assess the crops since they are affected by various environmental factors and predators. These challenges can be addressed by employing crop disease detection approaches using artificial intelligence-based machine learning and deep learning techniques. This paper provides a comprehensive survey of various techniques utilized for crop disease prediction based on machine learning and deep learning approaches. This literature review summarises the contributions of a wide range of research works to the field of crop disease prediction, highlighting their commonalities and differences, parameters, and performance indicators. Further, to evaluate, a case study has been presented on how the paradigm shift will lead us to the design of an efficient learning model for crop disease prediction. It also identifies the gaps in knowledge that are supposed to be addressed to forge a path forward in research. From the survey conducted, it is apparent that the deep learning technique shows high efficiency over the machine learning approaches, thereby preventing crop loss.
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智能农业中用于作物病害预测的机器学习和深度学习技术综合调查
由细菌、真菌和病毒引起的疾病是许多农作物面临的问题。在各种形式的农业中,农民每天都要通过人工检查来评估农作物,这给他们带来了挑战。此外,由于农作物受到各种环境因素和天敌的影响,因此很难对其进行评估。采用基于人工智能的机器学习和深度学习技术的作物疾病检测方法可以解决这些难题。本文对基于机器学习和深度学习方法的作物病害预测所使用的各种技术进行了全面调查。这篇文献综述总结了大量研究工作对作物病害预测领域的贡献,强调了它们的共性和差异、参数和性能指标。此外,为了进行评估,还介绍了一个案例研究,说明范式转变将如何引导我们设计出用于作物病害预测的高效学习模型。它还指出了为开辟研究道路而需要解决的知识空白。从调查中可以看出,深度学习技术比机器学习方法显示出更高的效率,从而避免了作物损失。
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来源期刊
Nature Environment and Pollution Technology
Nature Environment and Pollution Technology Environmental Science-Environmental Science (all)
CiteScore
1.20
自引率
0.00%
发文量
159
审稿时长
36 weeks
期刊介绍: The journal was established initially by the name of Journal of Environment and Pollution in 1994, whose name was later changed to Nature Environment and Pollution Technology in the year 2002. It has now become an open access online journal from the year 2017 with ISSN: 2395-3454 (Online). The journal was established especially to promote the cause for environment and to cater the need for rapid dissemination of the vast scientific and technological data generated in this field. It is a part of many reputed international indexing and abstracting agencies. The Journal has evoked a highly encouraging response among the researchers, scientists and technocrats. It has a reputed International Editorial Board and publishes peer reviewed papers. The Journal has also been approved by UGC (India). The journal publishes both original research and review papers. The ideology and scope of the Journal includes the following. -Monitoring, control and management of air, water, soil and noise pollution -Solid waste management -Industrial hygiene and occupational health -Biomedical aspects of pollution -Toxicological studies -Radioactive pollution and radiation effects -Wastewater treatment and recycling etc. -Environmental modelling -Biodiversity and conservation -Dynamics and behaviour of chemicals in environment -Natural resources, wildlife, forests and wetlands etc. -Environmental laws and legal aspects -Environmental economics -Any other topic related to environment
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