植物叶片病害检测和分类使用深度学习:回顾和提出的系统在孟加拉国的观点

Md. Jalal Uddin Chowdhury, Zumana Islam Mou, Rezwana Afrin, Shafkat Kibria
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引用次数: 0

摘要

农业是孟加拉国人民就业、GDP贡献和主要生计的重要组成部分。它在减少贫困和确保粮食安全方面发挥着至关重要的作用。植物病害是孟加拉国农业生产的一个严重障碍。有时,人类无法用肉眼从被感染的叶子上发现这种疾病。在植物中使用无机化学品或杀虫剂时,为时已晚,大多数情况下会徒劳无功,使之前的所有劳动付诸东流。基于叶子的图像分类的深度学习技术已经显示出令人印象深刻的效果,可以使所有疾病的识别和分类工作变得更加轻松和精确。在本文中,我们主要提出了一个更好的叶片病害检测模型。我们提出的论文包括三种不同作物的数据收集:甜椒、西红柿和土豆。为了训练和测试所提出的CNN模型,使用了来自Kaggle的植物叶片病害数据集,该数据集有17430张图像。这些图像被标记为14个不同的损坏等级。所开发的CNN模型性能良好,能够成功地对被测疾病进行检测和分类。提出的CNN模型在作物病害管理中可能具有很大的潜力。
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Plant Leaf Disease Detection and Classification Using Deep Learning: A Review and A Proposed System on Bangladesh’s Perspective
A very crucial part of Bangladeshi people’s employment, GDP contribution, and mainly livelihood is agriculture. It plays a vital role in decreasing poverty and ensuring food security. Plant diseases are a serious stumbling block in agricultural production in Bangladesh. At times, humans can’t detect the disease from an infected leaf with the naked eye. Using inorganic chemicals or pesticides in plants when it’s too late leads in vain most of the time, deposing all the previous labor. The deep-learning technique of leaf-based image classification, which has shown impressive results, can make the work of recognizing and classifying all diseases trouble-less and more precise. In this paper, we’ve mainly proposed a better model for the detection of leaf diseases. Our proposed paper includes the collection of data on three different kinds of crops: bell peppers, tomatoes, and potatoes. For training and testing the proposed CNN model, the plant leaf disease dataset collected from Kaggle, is used which has 17430 images. The images are labeled with 14 separate classes of damage. The developed CNN model performs efficiently and could successfully detect and classify the tested diseases. The proposed CNN model may have great potency in crop disease management.
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