Analysis of DenseNet201 with SGD optimizer for diagnosis of multiple rice leaf diseases

Shikha Prasher, Leema Nelson, Avinash Sharma
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引用次数: 2

Abstract

Rice is the primary food crop worldwide. It serves as a source of energy and basic nutrition for more than half of the world's population. In rice leaf diseases such as blast, blight, and tungro affect the yield quality and quantity of rice grains. To overcome the above issues, a classifier was developed using a CNN model with SGD and Adam optimizer. The CNN classifier model extract the important features from the rice leaf image dataset and categories which the type of disease is affected in the paddy crop. The performance of the classifier was evaluated using a rice-leaf image dataset obtained from the Kaggle respository. According to the evaluation results, DenseNet201 with the SGD optimizer provided a maximum accuracy of 95% when compared to the Adam optimizer with 93.33% accuracy.
利用 SGD 优化器分析 DenseNet201,诊断多种水稻叶部病害
水稻是世界上最主要的粮食作物。它是世界上一半以上人口的能源和基本营养来源。稻瘟病、纹枯病和褐斑病等稻叶病害会影响稻谷的产量和质量。为了克服上述问题,我们使用带有 SGD 和 Adam 优化器的 CNN 模型开发了一种分类器。CNN 分类器模型从水稻叶片图像数据集中提取重要特征,并对水稻作物的病害类型进行分类。分类器的性能使用从 Kaggle 数据库中获得的水稻叶片图像数据集进行了评估。评估结果表明,与亚当优化器 93.33% 的准确率相比,使用 SGD 优化器的 DenseNet201 的准确率最高,达到 95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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