利用混合深度学习机制的新型 U-Net 对农作物害虫进行分割和检测。

IF 3.8 1区 农林科学 Q1 AGRONOMY Pest Management Science Pub Date : 2024-03-20 DOI:10.1002/ps.8083
Nagaveni Biradar, Girisha Hosalli
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引用次数: 0

摘要

在印度,由于对农产品的需求不断增加,农业成为经济部门的支柱。然而,由于农作物中存在害虫,农业生产受到了影响。为了解决农作物害虫检测问题,人们开发了多种方法,但都未能取得较好的效果。因此,本研究采用了一种新的混合深度学习机制来分割和检测农作物中的害虫。图像采集、预处理、分割和检测是拟议研究涉及的步骤。预处理涉及三个步骤:图像重新缩放、基于均衡联合直方图的对比度增强(Eq-JH-CE)和基于小弯变换的去噪(BT-D)。然后,使用 DenseNet-77 UNet 模型对预处理后的图像进行分割。在本节中,传统 UNet 模型的复杂性通过与 DenseNet-77 模型的混合得到了缓解。使用改进后的模型完成分割后,通过提出一种新颖的基于卷积片断-注意力的门控递归单元(CS-AGRU)模型,对农作物害虫进行检测和分类。所提出的模型是卷积神经网络(CNN)和门控递归单元(GRU)的结合。为了获得更高的准确度,本研究将这两个效率极高的模型进行了混合。此外,还在拟议模型中应用了切片关注机制,以获取相关特征信息,从而提高计算效率。因此,作物中的害虫最终是通过所提出的方法检测出来的。该方法使用 Python 编程语言实现。与现有技术相比,该方法的准确率范围为 99.52%,IoU 为 99.1%,精确度为 98.88%,召回率为 99.53%,F1 分数为 99.35%,FNR 为 0.011。本文受版权保护。保留所有权利。
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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Segmentation and detection of crop pests using novel U-Net with hybrid deep learning mechanism

OBJECTIVE

In India, agriculture is the backbone of economic sectors because of the increasing demand for agricultural products. However, agricultural production has been affected due to the presence of pests in crops. Several methods were developed to solve the crop pest detection issue, but they failed to achieve better results. Therefore, the proposed study used a new hybrid deep learning mechanism for segmenting and detecting pests in crops.

METHOD

Image collection, pre-processing, segmentation, and detection are the steps involved in the proposed study. There are three steps involved in pre-processing: image rescaling, equalized joint histogram based contrast enhancement (Eq-JH-CE), and bendlet transform based De-noising (BT-D). Next, the pre-processed images are segmented using the DenseNet-77 UNet model. In this section, the complexity of the conventional UNet model is mitigated by hybridizing it with the DenseNet-77 model. Once the segmentation is done with an improved model, the crop pests are detected and classified by proposing a novel Convolutional Slice-Attention based Gated Recurrent Unit (CS-AGRU) model. The proposed model is the combination of a convolutional Neural Network (CNN) and a Gated Recurrent Unit (GRU). In order to achieve better accuracy outcomes, the proposed study hybridized these models due to their great efficiency. Also, the slice attention mechanism is applied over the proposed model for fetching relevant feature information and thereby enhancing the computational efficiency. So, pests in the crop are finally detected using the proposed method.

RESULT

The Python programming language is utilized for implementation. The proposed approach shows a better accuracy range of 99.52%, IoU of 99.1%, precision of 98.88%, recall of 99.53%, F1-score of 99.35%, and FNR of 0.011 compared to existing techniques.

DISCUSSION

Identifying and classifying pests helps farmers anticipate potential threats to their crops. By knowing which pests are prevalent in their region or are likely to infest certain crops, farmers can implement preventive measures to protect their crops, such as planting pest-resistant varieties, using crop rotation, or deploying traps and barriers. © 2024 Society of Chemical Industry.

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来源期刊
Pest Management Science
Pest Management Science 农林科学-昆虫学
CiteScore
7.90
自引率
9.80%
发文量
553
审稿时长
4.8 months
期刊介绍: Pest Management Science is the international journal of research and development in crop protection and pest control. Since its launch in 1970, the journal has become the premier forum for papers on the discovery, application, and impact on the environment of products and strategies designed for pest management. Published for SCI by John Wiley & Sons Ltd.
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