基于决策树的移动众包农业咨询系统

Priyanka Singh, B. Jagyasi, N. Rai, S. Gharge
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引用次数: 9

摘要

在农业中,造成产量和收成质量损失的主要原因是病虫害的爆发。很少的专家很难访问大量的农场来分析病虫害并向同一地区的其他农民提供警报。因此,病虫害的远程分类对于向农民提供适当的纠正措施建议至关重要。在本文中,我们提出了一种基于手机的众包方法,通过汇总来自多个农民的信息来检测一个地区的植物病害。拟议的众包方法基于二元决策树,有助于减少向农民提出的问题数量,并对植物病害做出准确可靠的决策。该结果是利用UCI机器学习库中的大豆病害大数据集对大豆作物中的15种流行病害进行分类得出的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision tree based mobile crowdsourcing for agriculture advisory system
In agriculture, the major cause of loss of yield and quality of harvest is due to the outbreak of pest and diseases. It is difficult for fewer experts to visit a large number of farms to analyze the pest and diseases and to provide alerts to other farmers in the same region. Therefore, remote classification of pest and diseases is essential to advise on appropriate corrective actions to the farmers. In this paper, we propose a mobile phone based crowdsourcing approach to detect the emergence of plant diseases in a region by aggregating information from multiple farmers. The proposed crowdsourcing approach is based on the binary decision tree that helps to minimize the number of questions to be asked to the farmers and results in an accurate and reliable decisions on plant diseases. The results are presented by using the soybean disease large dataset from the UCI machine learning repository for the classification of 15 prevalent diseases in the soybean crop.
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