基于嵌入式平台的辣椒炭疽病深度学习鉴定

Sneha Varur, Akshath Mugad, Arya Kinagi, Akhil Shanbhag, Karthik Hiremath, Uday Kulkarni
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引用次数: 0

摘要

辣椒是全球最常用的香料之一,是许多菜系不可或缺的一部分。墨西哥、印度、中国和韩国等许多国家都以种植和食用辣椒而闻名。其中,印度是世界上最大的辣椒生产国。当大规模种植时,这些作物极易受到真菌、害虫、杂草、细菌、病毒和病原体的侵袭,从而严重阻碍生产。在这些植物病害中,最常见的是由炭疽菌引起的辣椒炭疽病,它会影响辣椒植物的叶子和果实,给农民造成毁灭性的损失。本文提出了一种基于深度神经网络(Deep Neural Network, DNN)的方法,利用迁移学习对患病的炭疽病辣椒和健康辣椒进行分类。这项研究通过收集来自农业科学大学Dharwad和Hubli郊区Kusugal辣椒农场的辣椒样本,开发了一个数据集。数据集由4个类和两种辣椒组成;红色和绿色。每个彩色辣椒都有两个阶段;健康期和炭疽病期。在这里,不同的预训练DNN架构和迁移学习方法被用于在我们的数据集上训练模型。最后,根据在建议数据集上训练的所有架构的准确性和模型大小对结果进行比较。并选择模型尺寸最小、嵌入精度高的体系结构嵌入边缘器件。
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 Anthracnose in Chillies using Deep Learning on Embedded Platforms
Chilli is among the most commonly used spices globally and is an integral part of many cuisines. Many countries like Mexico, India, China, and Korea are known for growing and consuming chillies. Amongst all, India is the largest producer of chillies worldwide. When cultivated on a large scale, these crops are highly susceptible to fungal, pests, weeds, bacterial, viral and pathogen attacks that substantially hinder production. Among these plant attacks, the most common is Chilli anthracnose, caused by the Colletotrichum fungus, which affects the leaves and the fruit of the chilli plant, causing a devastating loss to the farmers. Our paper proposes a solution based on Deep Neural Network (DNN) using transfer learning to classify disease-affected Anthracnose chillies from Healthy chillies. This study has developed a dataset by collecting the chilli samples from the University of Agricultural Sciences, Dharwad and chilli farms in Kusugal, outskirts of Hubli. The dataset consists of 4 classes with two types of chilli; red and green. Each coloured chilli has two stages; the healthy stage and the Anthracnose diseased stage. Here, different pre-trained DNN architectures and transfer learning methods are used to train the model on our dataset. Finally, the results are compared based on accuracy and model size for all architectures trained on the proposed dataset. And choose the architecture with the smallest model size and high accuracy for embedding in an edge device.
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