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The Implementation of CNN on Website-based Rice Plant Disease Detection

机译:基于遗址水稻植物疾病检测的CNN的实施

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Rice is the staple food of Indonesian society. As Indonesia's population continues to grow, this implies that the need for rice consumption will also increase in the future. Therefore, it is necessary to have a strategy to maintain and increase rice harvest production in Indonesia. Rice farmers need to get maximum support to maintain the quality of the yield and rice produced. Unfortunately, in order to harvest rice at the right time with good quality, farmers often face various obstacles that can cause crop failure. Harvest failure in rice can be caused by various factors e.g. the disease that infects rice plants. To reduce crop failure caused by rice plant diseases, this research proposes a website-based system with the aim of detecting rice plant diseases to optimize agricultural sector. This system was developed by applying the Deep Learning method. The method of image processing was implemented using a Convolutional Neural Network with the GoogLeNet architecture which is then integrated into a website-based application. The results showed an increase in accuracy in the increasing number of epochs for CNN training models. This application is expected to be able to assist rice farmers in analyzing diseases in rice plants that are planted, so that prevention and handling can be carried out in accordance with the aim of minimizing losses from crop failure.
机译:米是印尼社会的主食。随着印度尼西亚的人口继续增长,这意味着对米饭消费的需求也将在未来增加。因此,有必要在印度尼西亚进行维持和增加水稻收获生产的策略。稻米需要获得最大的支持,以维持生产的产量和水稻的质量。不幸的是,为了充分利用良好的品质,农民经常面临各种障碍,可能会导致作物失败。米饭中的收获失败可能是由各种因素引起的。感染水稻的疾病。为了减少水稻植物疾病引起的作物失败,本研究提出了一种基于网站的系统,目的是检测水稻植物疾病以优化农业部门。该系统是通过应用深度学习方法开发的。使用卷积神经网络实现图像处理方法,其中陀螺仪架构被集成到基于网站的应用程序中。结果表明,CNN训练模型的越来越多的时期的准确性提高。预计本申请能够协助稻农民分析种植的水稻植物的疾病,以便按照从作物失败的损失最小化损失的目的进行预防和处理。

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