基于深度卷积神经网络的水稻品种分类图像处理

Mathuros Panmuang, Chonnikarn Rodmorn, Suriya Pinitkan
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引用次数: 2

摘要

本研究应用深度卷积神经网络,利用VGG16模型对水稻品种进行图像筛选。试验选用的水稻品种包括KorKhor 23、Suphanburi 1、Pathum Thani 1、Chainat 1和hommali rice 105 5个品种,共1500张图片。实验和模型测试结果表明,通过训练得到的水稻种子图像准确率为85%,具有较高的可靠性。因此,利用该模型开发了一个网站,可以通过浏览器和移动应用程序访问,农民或相关人员可以将水稻种子图像上传到系统中,系统可以预测水稻的品种,根据系统的测试,发现它可以准确预测水稻的品种。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Processing for Classification of Rice Varieties with Deep Convolutional Neural Networks
This research applied the Deep Convolutional Neural Networks and used the VGG16 model to screen rice varieties by images. The rice varieties selected in the experiment include five varieties: KorKhor 23, Suphanburi 1, Pathum Thani 1, Chainat 1, and Hom Mali Rice 105, totaling 1,500 images. The results of the experiments and model testing showed that the accuracy obtained by training the images of rice seeds is 85%, which is highly reliable. Therefore, the model was used to develop a website that can be accessed via web browsers and mobile apps where farmers or related persons can upload rice seed images to the system so that the system can predict what variety of rice it is and according to the testing of the system, it was found that it can make an accurate forecast of rice varieties.
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