Maize Plant Disease classification using optimized DenseNet121

Sabita Sahu, J. Amudha
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Abstract

In many countries, agriculture is the predominant root of income.Agriculture provides food, as well as income to farmers. Maize is one of world's leading crops and universally cultivated as cereal grain. Usually, agricultural specialists or farmers use their skills to identify pests and diseases that affect fruit and leaves on the spot. Even the most experienced farmer is prone to making errors in disease identification while growing crops in a greater scale. To treat leaf disease, pesticides are used, however, this is damaging to people's health [1]. Several Machine learning, Deep learning algorithms are suggested to classify diseases in the maize plant. Identification of maize leaf disease is a great challenge due to environmental changes and illumination variation in weather conditions. This research focuses on using different Deep Learning architectures like optimized DenseNet121,CNN, ResNet50, MobileNet, VGG16, and Inception-V3for classification of maize leaves disease so that preventive measures can be taken by the farmers at early stage to protect the crops. Our proposed optimized Densenet121 model outperformed compared to optimized CNN, and ResNet50 with lesser parameters and higher accuracy.
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基于优化DenseNet121的玉米病害分类
在许多国家,农业是主要的收入来源。农业为农民提供食物和收入。玉米是世界主要作物之一,普遍作为谷类作物种植。通常,农业专家或农民利用他们的技能当场识别影响水果和叶子的病虫害。即使是最有经验的农民,在大规模种植作物时,也容易在疾病识别上犯错误。为了治疗叶病,人们使用杀虫剂,然而,这对人们的健康有害。提出了几种机器学习、深度学习算法来对玉米植株进行病害分类。由于环境的变化和天气条件下光照的变化,玉米叶片病害的鉴定是一个巨大的挑战。本研究的重点是使用不同的深度学习架构,如优化的DenseNet121、CNN、ResNet50、MobileNet、VGG16和inception - v3对玉米叶片病害进行分类,以便农民在早期采取预防措施,保护作物。我们提出的优化后的Densenet121模型与优化后的CNN和ResNet50相比,具有更少的参数和更高的精度。
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