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Classification of pest detection in paddy crop based on transfer learning approach

机译:基于迁移学习方法的水稻作物有害生物检测分类

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摘要

Pest recognition in the agriculture field plays a critical issue for the farmers which diminishes economic growth. So far, traditional practices were followed by farmers to increase yield production. Nowadays, researchers execute a deep learning approach to classify various kinds of images practically. In this paper, Deep convolutional neural networks (DCNN) are used to recognise ten kinds of pests present in the paddy crop. The data repository contains around 3549 pest images that affect the paddy crops, Since Deep Learning supports well for larger data-set so the data augmentation process is carried out. The neural model is build using various kinds of DCNN architecture, interpretation was made over the models based on the accuracy rate and the performance. The transfer learning approach is applied over the pest data set by fine-tuning the hyperparameters and the layers of the ResNet-50 model. By comparing the resultant value, the fine-tuned ResNet-50 model produced better accuracy of 95.012 among other models. The obtained resultant value describes the effective performance of the model in pest disease classification.
机译:农业领域的害虫识别对农民来说是一个关键问题,这阻碍了经济增长。到目前为止,农民遵循传统做法来增加产量。如今,研究人员采用深度学习方法来实际对各种图像进行分类。本文采用深度卷积神经网络(DCNN)技术对水稻作物中存在的10种害虫进行识别。数据存储库包含大约 3549 张影响稻田作物的害虫图像,由于深度学习可以很好地支持更大的数据集,因此可以执行数据增强过程。神经模型采用各种DCNN架构构建,根据准确率和性能对模型进行解释。通过微调 ResNet-50 模型的超参数和层,将迁移学习方法应用于害虫数据集。通过比较结果值,微调后的ResNet-50模型的准确率优于其他模型,达到95.012%。得到的结果值描述了该模型在病虫害分类中的有效性能。

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