首页> 外文会议>International Conference on Frontiers of Materials and Smart System Technologies >Data Analysis And Prediction On Cloud Computing For Enhancing Productivity In Agriculture
【24h】

Data Analysis And Prediction On Cloud Computing For Enhancing Productivity In Agriculture

机译:云计算数据分析与预测,以提高农业生产力

获取原文

摘要

Introducing a concept to increase productivity and predict the crops from the diseases.To find the leaf characteristics using image processing to detect the diseases and pests that are present in leaves.In agriculture the main important aspect is to take proper steps to increase the production,which means to know the state of leaves condition in the field.In this undertaking the programmed system recognizes the qualities of the leaves.The programmed leaf attributes recognition is basic one in observing extensive fields of yields,and to naturally distinguish indications of leaf attributes when they show up on takes off.The basic leadership framework uses the picture portrayal and managed classifier of Neural Network.Picture preparing procedures for this sort of choice examination includes preprocessing,highlight extraction and characterization organize.In this procedure,the picture is taken and that can be resized if required the locale of intrigue choice can be performed.Here,shading and surface highlights are extricated from a contribution for organize preparing and grouping.Shading highlights like mean,standard deviation of HSV shading space and surface highlights like vitality,differentiation,homogeneity and connection.The framework will be utilized to order the test pictures naturally to choose leaf attributes.For this approach,programmed classifier Neural Network(NN)is utilized for grouping in light of learning with some preparation tests of that same classification.This system utilizes digression sigmoid capacity as portion work.At long last,the mimicked result demonstrates that utilized system classifier gives least blunder amid preparing and better exactness in order.This helps to read the classifier(Characteristics difference of the input image).By using the Threshold values we can detect the pests/diseases and also helps to give the required data about the diseases,details of pesticides and other like required quantity of the pesticides and displays the present market prices for the selected crop.
机译:介绍一种提高生产率并预测来自疾病的作物的概念。要使用图像处理发现叶片特征来检测叶子中存在的疾病和害虫。在农业的主要一个方面是采取适当的步骤来增加生产,这意味着知道该领域的叶片状况。在这项工作中,程序系统认识到叶子的质量。编程的叶子属性识别是观察大量产量的基本领域,并自然地区分叶子属性的指示他们出现起飞。基本的领导框架使用神经网络的图片写法和管理分类器。对于这种选择检查的编写程序准备程序包括预处理,突出提取和表征组织。在此过程中,拍摄了图片如果需要,可以调整大小,如果需要,可以执行迷恋选择的语言环境。它,阴影a ND Surface亮点是从组织准备和分组的贡献中提醒。炫耀的亮点,如平均值,HSV阴影空间和表面突出的标准偏差,如活力,分化,同质性和连接。框架将用于自然地订购测试图片以便自然地选择测试图片叶子属性。对于这种方法,编程的分类器神经网络(NN)用于根据学习进行分组,其中一些准备测试具有相同的分类。该系统利用较低的Sigmoid容量作为部分工作。最后,模仿结果展示了利用系统分类器提供最少的误差,在准备和更好的准确性下符合顺序。这有助于阅读分类器(输入图像的特性差异)。使用阈值,我们可以检测到有害生物/疾病,并有助于提供所需的数据疾病,杀虫剂的细节和其他杀虫剂所需数量并显示出PR Esent所选作物的市场价格。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号