An Efficient Pest Classification In Smart Agriculture Using Transfer Learning

Tuan T. Nguyen, Quoc-Tuan Vien, H. Sellahewa
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引用次数: 8

Abstract

To this day, agriculture still remains very important and plays considerable role to support our daily life and economy in most countries. It is the source of not only food supply, but also providing raw materials for other industries, e.g. plastic, fuel. Currently, farmers are facing the challenge to produce sufficient crops for expanding human population and growing in economy, while maintaining the quality of agriculture products. Pest invasions, however, are a big threat to the growth crops which cause the crop loss and economic consequences. If they are left untreated even in a small area, they can quickly spread out other healthy area or nearby countries. A pest control is therefore crucial to reduce the crop loss. In this paper, we introduce an efficient method basing on deep learning approach to classify pests from images captured from the crops. The proposed method is implemented on various EfficientNet and shown to achieve a considerably high accuracy in a complex dataset, but only a few iterations are required in the training process.
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基于迁移学习的智能农业害虫分类
直到今天,在大多数国家,农业仍然非常重要,在支持我们的日常生活和经济方面发挥着相当大的作用。它不仅是食品供应的来源,而且还为其他行业提供原材料,例如塑料,燃料。目前,农民面临的挑战是在保证农产品质量的同时,生产足够的粮食以满足人口增长和经济增长的需要。然而,有害生物的入侵对农作物的生长是一个巨大的威胁,造成作物损失和经济后果。如果不及时治疗,即使是在一个小地区,它们也会迅速传播到其他健康地区或附近的国家。因此,虫害防治对减少作物损失至关重要。本文介绍了一种基于深度学习的害虫分类方法。本文提出的方法在不同的高效网络上实现,在复杂的数据集上取得了相当高的准确率,但在训练过程中只需要少量的迭代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.00
自引率
0.00%
发文量
15
审稿时长
10 weeks
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