利用AlexNet对番茄叶片病害进行鉴定

Sarla Jangir, M. K. Jain, Palika Jajoo, Praveen Shukla
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引用次数: 0

摘要

植物是人类能量产生的主要来源,具有营养、治疗和其他益处。植物病害对作物生产造成重大损失,人工检测是一种劳动密集型、效率低下的方法。为了克服这个问题,已经开发了自动化植物病害检测系统,使用许多方法依赖于机器学习和图像处理来解决所指出的问题。植物病害改变叶子颜色和质地的能力被用来建立检测植物病害的技术。在这个学科中,像VGG和ResNET这样的深度学习模型经常被应用。然而,由于它们主要集中在特定作物或数据集上的疾病分类,这些模型中的大多数是不可扩展的。本工作的目的是提出一种检测叶片病害的增强方法。建议的系统是用Alexnet建立的,并对各种番茄叶片疾病进行了培训和测试。该模型的分类和验证准确率达到94.9%。今后,该模型将通过增加病害种类和其他植物病害的数量来实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Diseases for Tomato Leaves Using AlexNet
Plants are the key source of human energy generation and have nutritional, therapeutic, and other benefits. Plant diseases cause a significant loss in crop productivity, and manually inspecting for plant diseases is a labor-intensive and ineffective approach. To overcome this problem automated plant disease detection systems have been developed using many approaches rely on machine learning and image processing to address the indicated issue. The ability of plant illnesses to alter the color and texture of leaves is exploited to build techniques for detecting plant diseases. In this discipline, deep learning models like VGG and ResNET are often applied. However, because they are primarily focused on disease classification on a specific crop or dataset, the majority of these models are not scalable. The purpose of this work is to present an enhanced approach for detecting leaf diseases. The suggested system is built with Alexnet and trained and tested on a variety of tomato leaf diseases. This model achieves 94.9% accuracy for classification and validation. In future this model is implemented by increasing number of diseased classes as well as other plant disease.
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