基于迁移学习的印度水稻作物损失分类和预测方法的有效保险索赔

Sourav Bera, Anukampa Behera
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引用次数: 0

摘要

在以农业为主要经济部门的国家,以农作物损害为基础的保险索赔是一种普遍现象。为了使索赔评估、快速支付等相关流程更加有效和快速,必须对农田进行适当的损害评估。KishanRakshak是一种基于卷积神经网络(CNN)模型的迁移学习方法,该模型在自定义数据集上应用和微调后,可以对现场发生的损害百分比进行分类。这些分类都是遵守政府规定的。利用无人机捕捉受损作物的图像是一个相当昂贵的过程,而通过智能手机的相机在特定角度获得图像,使其更具成本效益。在现有数据集和定制数据集上进行的实验中,该模型的分类准确率达到了94.67%。KishaRakshak是一种新颖而富有成效的方法,为印度农民提供更容易的保险索赔评估和支付。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KishanRakshak : A Transfer Learning Approach to Classification and Prediction of Rice Crop Damage Estimation in India for Effective Insurance Claims
For countries where primary sector of economy is agriculture, the claim for insurance based on crop damage is a common phenomenon. To make the related processes like claim assessment, faster disbursement etc. more effective and faster, it is essential to have a proper damage assessment of the crop fields. KishanRakshak is a transfer learning approach based Convolutional Neural Network(CNN) model which when applied and fine-tuned on a custom made dataset classified the percentage of damage that has occurred in the field. These classifications are adhering to the government rules. Instead of making use of drones to capture the images of damaged crops which is rather a costly process, images are obtained through smartphones' cameras at certain angles making it much cost effective. On experimentation conducted over available as well as custom made datasets the proposed model has achieved a classification accuracy of 94.67 %. KishaRakshak, is a novel and productive approach to facilitate farmers in India with easier insurance claim assessment as well as disbursement.
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