基于轻量级CNN架构的棉花叶病检测与分类

A. S, A. Negi
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引用次数: 0

摘要

对影响棉花叶片的病害进行分类可以提高棉花产量。深度学习在许多领域被认为是一种有效的策略,并且已经成为农业领域大量研究项目的主题。这些调查主要集中在棉花叶片样品疾病的实时检测上。尽管卷积神经网络在植物病害的分类和鉴定方面做出了重大贡献,但要帮助农民和病理学家准确地检测和分类病害,还有很多工作要做。人工检查农作物是否患病需要大量的时间和金钱投入,而且是一个压力很大的过程。错误的诊断可能导致不正确的结论、无效的治疗和增加的费用。本文提出利用棉花作物叶片数据集训练深度学习Faster R-CNN模型,用于叶片病害的识别和分类。Plant Village数据集以及VGG-16、InceptionV1和V2被用作确定哪个特征提取器最有效的过程中的基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Detection and Classification of Cotton Leaf Disease Using a Lightweight CNN Architecture
The classification of diseases that affect the cotton leaf can boost the amount of cotton produced. Deep learning is becoming recognized as an effective strategy in a variety of fields and has been the subject of a significant number of research projects in the agricultural industry. These investigations have focused on the real-time detection of diseases in cotton leaf samples. Although Convolution Neural Networks have been a significant contributor to the categorization of plant diseases and the identification of those diseases, there is still much more work to be done to assist farmers and pathologists in accurately detecting and categorizing diseases. Manually inspecting crops for disease requires a significant investment of time and money and is a stressful process. An erroneous diagnosis can lead to incorrect conclusions, treatment that is ineffective, and increased costs. In this paper, it is proposed to train a deep learning Faster R-CNN model using the cotton crop leaf dataset in order to identify and classify leaf diseases. The Plant Village dataset, along with VGG-16, InceptionV1, and V2, is used as a benchmark in the process of determining which feature extractor is the most effective.
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