用于植物病害识别的局部和全局特征感知双分支网络

IF 7.6 1区 农林科学 Q1 AGRONOMY
Plant Phenomics Pub Date : 2024-07-31 eCollection Date: 2024-01-01 DOI:10.34133/plantphenomics.0208
Jianwu Lin, Xin Zhang, Yongbin Qin, Shengxian Yang, Xingtian Wen, Tomislav Cernava, Quirico Migheli, Xiaoyulong Chen
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引用次数: 0

摘要

准确识别植物病害对于确保农业生产安全非常重要。卷积神经网络(CNN)和视觉变换器(VT)可以提取有效的图像表征,已被广泛用于植物病害图像的智能识别。然而,卷积神经网络的局部感知能力强,全局感知能力差;视觉变换器的全局感知能力强,局部感知能力差。这使得 CNN 和 VT 在植物病害识别任务中的性能难以进一步提高。本文提出了一种用于植物病害识别的局部和全局特征感知双分支网络,命名为 LGNet。具体来说,我们首先设计了一个基于 CNN 和 VT 的双分支结构,以提取局部和全局特征。然后,设计一个自适应特征融合(AFF)模块来融合局部和全局特征,从而驱动模型动态感知不同特征的权重。最后,我们设计了分层混合尺度单元引导特征融合(HMUFF)模块,以挖掘不同层次特征中的关键信息,并融合其中的差异化信息,从而增强模型的多尺度感知能力。随后,我们在人工智能挑战者 2018 数据集和自采玉米病(SCD)数据集上进行了大量实验。实验结果表明,我们提出的 LGNet 在人工智能挑战者 2018 数据集和 SCD 数据集上都达到了最先进的识别性能,准确率分别为 88.74% 和 99.08%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local and Global Feature-Aware Dual-Branch Networks for Plant Disease Recognition.

Accurate identification of plant diseases is important for ensuring the safety of agricultural production. Convolutional neural networks (CNNs) and visual transformers (VTs) can extract effective representations of images and have been widely used for the intelligent recognition of plant disease images. However, CNNs have excellent local perception with poor global perception, and VTs have excellent global perception with poor local perception. This makes it difficult to further improve the performance of both CNNs and VTs on plant disease recognition tasks. In this paper, we propose a local and global feature-aware dual-branch network, named LGNet, for the identification of plant diseases. More specifically, we first design a dual-branch structure based on CNNs and VTs to extract the local and global features. Then, an adaptive feature fusion (AFF) module is designed to fuse the local and global features, thus driving the model to dynamically perceive the weights of different features. Finally, we design a hierarchical mixed-scale unit-guided feature fusion (HMUFF) module to mine the key information in the features at different levels and fuse the differentiated information among them, thereby enhancing the model's multiscale perception capability. Subsequently, extensive experiments were conducted on the AI Challenger 2018 dataset and the self-collected corn disease (SCD) dataset. The experimental results demonstrate that our proposed LGNet achieves state-of-the-art recognition performance on both the AI Challenger 2018 dataset and the SCD dataset, with accuracies of 88.74% and 99.08%, respectively.

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来源期刊
Plant Phenomics
Plant Phenomics Multiple-
CiteScore
8.60
自引率
9.20%
发文量
26
审稿时长
14 weeks
期刊介绍: Plant Phenomics is an Open Access journal published in affiliation with the State Key Laboratory of Crop Genetics & Germplasm Enhancement, Nanjing Agricultural University (NAU) and published by the American Association for the Advancement of Science (AAAS). Like all partners participating in the Science Partner Journal program, Plant Phenomics is editorially independent from the Science family of journals. The mission of Plant Phenomics is to publish novel research that will advance all aspects of plant phenotyping from the cell to the plant population levels using innovative combinations of sensor systems and data analytics. Plant Phenomics aims also to connect phenomics to other science domains, such as genomics, genetics, physiology, molecular biology, bioinformatics, statistics, mathematics, and computer sciences. Plant Phenomics should thus contribute to advance plant sciences and agriculture/forestry/horticulture by addressing key scientific challenges in the area of plant phenomics. The scope of the journal covers the latest technologies in plant phenotyping for data acquisition, data management, data interpretation, modeling, and their practical applications for crop cultivation, plant breeding, forestry, horticulture, ecology, and other plant-related domains.
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