一个轻量级的CNN架构来识别孟加拉国的各种水稻植物病害

Md. Sazzadul Islam Prottasha, Z. Tasnim, S. Reza, Dilshad Ara Hossain
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引用次数: 0

摘要

近年来,水稻病害已成为全球关注的主要问题。病害的早期和准确预测可以帮助农民对植物进行适当的处理,从而保护作物免受农药侵害,提高整体生长。基于深度学习的图像处理方法可以很好地准确和精确地识别各种水稻植物病害。在本研究中,我们共收集了12种不同类型的水稻病害图像。使用不同的算法对图像进行预处理和增强。随着不同的先进CNN架构,轻量级CNN架构已被提出用于识别各种水稻植物病害。实验结果表明,该模型能有效识别水稻病害,平均验证准确率为95.4%。考虑到较小的参数尺寸,显然我们提出的CNN模型在准确检测各种水稻植物病害方面表现得非常好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight CNN Architecture to Identify Various Rice Plant Diseases in Bangladesh
Rice diseases has been a major concern all over the world in recent years. Early and accurate prediction of disease can help the farmers in applying proper treatment on the plants thus protecting the crop from pesticides and improving the overall growth. Deep learning based image processing methods can be a great solution in identifying various rice plant diseases accurately and precisely. For this research, we have collected a total 12 different types of rice disease images. The images has been pre-processed and augmented using different algorithms. Along with different state of the art CNN architectures, a lightweight CNN architecture has been proposed for identifying various rice plant diseases. The experimental result shows that our proposed model can identify the rice plant diseases with a mean validation accuracy of 95.4%. Considering small parameter size, it is evident that our proposed CNN model performs significantly well in detecting various rice plant diseases accurately.
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