{"title":"利用机器学习方法预测作物病害的简要研究","authors":"Gawande Apeksha R., Sherekar Swati S.","doi":"10.1109/iccica52458.2021.9697143","DOIUrl":null,"url":null,"abstract":"The intention of this entire survey is to evaluate the importance and impact of the articles which have been posted with the identify device gaining knowledge of-primarily based totally early detection of crop disorder or prediction of fungal illnesses on vegetation with the help of device gaining knowledge of and facts mining techniques at some stage in the duration 2016-2020. It likewise uncovers that the territory of plant disorder has gotten elevated and hobby with the aid of using researchers, studies investment institutions, and experts. The electronically available peer-review journal papers from Google Scholar, Web of Sciences, and papers available at Mendeley desktop application databases were reviewed. The following parameters were considered while reviewing the papers. 1. Which machine learning or data mining algorithmic approach was used? 2. Which performance metrics were used? 3. Which plant diseases data set was used? 4. How was the performance analysis carried out? 5. Whether the results were compared with some other techniques? The computer algorithms-based articles deal with the early detection of plant disease and were published between 2016 and 2020 were reviewed. From the top-refered to explore distributions relating to AI based expectation of plant infection, it is seen that mixture models were broadly used over a singular order model. A broadly utilized relapse model with SVM, variations of choice trees, and Naive Bayes models are having the best exhibition for early expectation of yield infections.","PeriodicalId":327193,"journal":{"name":"2021 International Conference on Computational Intelligence and Computing Applications (ICCICA)","volume":"799 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-11-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"A brief study on the prediction of crop disease using machine learning approaches\",\"authors\":\"Gawande Apeksha R., Sherekar Swati S.\",\"doi\":\"10.1109/iccica52458.2021.9697143\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The intention of this entire survey is to evaluate the importance and impact of the articles which have been posted with the identify device gaining knowledge of-primarily based totally early detection of crop disorder or prediction of fungal illnesses on vegetation with the help of device gaining knowledge of and facts mining techniques at some stage in the duration 2016-2020. It likewise uncovers that the territory of plant disorder has gotten elevated and hobby with the aid of using researchers, studies investment institutions, and experts. The electronically available peer-review journal papers from Google Scholar, Web of Sciences, and papers available at Mendeley desktop application databases were reviewed. The following parameters were considered while reviewing the papers. 1. Which machine learning or data mining algorithmic approach was used? 2. Which performance metrics were used? 3. Which plant diseases data set was used? 4. How was the performance analysis carried out? 5. Whether the results were compared with some other techniques? The computer algorithms-based articles deal with the early detection of plant disease and were published between 2016 and 2020 were reviewed. From the top-refered to explore distributions relating to AI based expectation of plant infection, it is seen that mixture models were broadly used over a singular order model. 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引用次数: 0
摘要
整个调查的目的是评估在2016-2020年期间的某个阶段,通过识别设备获取知识(主要基于作物病害的完全早期检测或植被真菌疾病的预测)发布的文章的重要性和影响,该设备获取知识和事实挖掘技术。它还揭示了在研究人员、研究投资机构和专家的帮助下,植物紊乱的领域得到了提升和重视。从Google Scholar, Web of Sciences和Mendeley桌面应用程序数据库中获得的电子同行评议期刊论文进行了审查。在审查论文时考虑了以下参数。1. 使用了哪种机器学习或数据挖掘算法?2. 使用了哪些性能指标?3.使用了哪个植物病害数据集?4. 性能分析是如何进行的?5. 结果是否与其他技术进行了比较?回顾了2016年至2020年间发表的基于计算机算法的植物病害早期检测文章。从顶部参考的探索与基于人工智能的植物感染预期相关的分布,可以看出混合模型被广泛使用于单阶模型。基于支持向量机的复发模型、选择树的变化和朴素贝叶斯模型在产量感染的早期预期中有最好的表现。
A brief study on the prediction of crop disease using machine learning approaches
The intention of this entire survey is to evaluate the importance and impact of the articles which have been posted with the identify device gaining knowledge of-primarily based totally early detection of crop disorder or prediction of fungal illnesses on vegetation with the help of device gaining knowledge of and facts mining techniques at some stage in the duration 2016-2020. It likewise uncovers that the territory of plant disorder has gotten elevated and hobby with the aid of using researchers, studies investment institutions, and experts. The electronically available peer-review journal papers from Google Scholar, Web of Sciences, and papers available at Mendeley desktop application databases were reviewed. The following parameters were considered while reviewing the papers. 1. Which machine learning or data mining algorithmic approach was used? 2. Which performance metrics were used? 3. Which plant diseases data set was used? 4. How was the performance analysis carried out? 5. Whether the results were compared with some other techniques? The computer algorithms-based articles deal with the early detection of plant disease and were published between 2016 and 2020 were reviewed. From the top-refered to explore distributions relating to AI based expectation of plant infection, it is seen that mixture models were broadly used over a singular order model. A broadly utilized relapse model with SVM, variations of choice trees, and Naive Bayes models are having the best exhibition for early expectation of yield infections.