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通过多光谱图像鉴定花生种子中的真菌:提高卫生质量的技术进展

Fungal identification in peanuts seeds through multispectral images: Technological advances to enhance sanitary quality.

作者信息

Sudki Julia Marconato, Fonseca de Oliveira Gustavo Roberto, de Medeiros André Dantas, Mastrangelo Thiago, Arthur Valter, Amaral da Silva Edvaldo Aparecido, Mastrangelo Clíssia Barboza

机构信息

Laboratory of Radiobiology and Environment, Center for Nuclear Energy in Agriculture, University of São Paulo (CENA/USP), Piracicaba, SP, Brazil.

Department of Crop Science, College of Agricultural Sciences, Faculdade de Ciências Agronômicas (FCA), São Paulo State University (UNESP), Botucati, Brazil.

出版信息

Front Plant Sci. 2023 Feb 22;14:1112916. doi: 10.3389/fpls.2023.1112916. eCollection 2023.

Abstract

The sanitary quality of seed is essential in agriculture. This is because pathogenic fungi compromise seed physiological quality and prevent the formation of plants in the field, which causes losses to farmers. Multispectral images technologies coupled with machine learning algorithms can optimize the identification of healthy peanut seeds, greatly improving the sanitary quality. The objective was to verify whether multispectral images technologies and artificial intelligence tools are effective for discriminating pathogenic fungi in tropical peanut seeds. For this purpose, dry peanut seeds infected by fungi (, , sp., and sp.) were used to acquire images at different wavelengths (365 to 970 nm). Multispectral markers of peanut seed health quality were found. The incubation period of 216 h was the one that most contributed to discriminating healthy seeds from those containing fungi through multispectral images. Texture (Percent Run), color (CIELab *) and reflectance (490 nm) were highly effective in discriminating the sanitary quality of peanut seeds. Machine learning algorithms (LDA, MLP, RF, and SVM) demonstrated high accuracy in autonomous detection of seed health status (90 to 100%). Thus, multispectral images coupled with machine learning algorithms are effective for screening peanut seeds with superior sanitary quality.

摘要

种子的卫生质量在农业中至关重要。这是因为致病真菌会损害种子的生理质量,并阻止田间植株的形成,给农民造成损失。多光谱图像技术与机器学习算法相结合,可以优化健康花生种子的识别,大大提高卫生质量。目的是验证多光谱图像技术和人工智能工具是否能有效鉴别热带花生种子中的致病真菌。为此,使用受真菌(、、种和种)感染的干花生种子在不同波长(365至970纳米)下采集图像。发现了花生种子健康质量的多光谱标记。216小时的培养期对通过多光谱图像区分健康种子和含真菌种子的贡献最大。纹理(行程百分比)、颜色(CIELab*)和反射率(490纳米)在鉴别花生种子卫生质量方面非常有效。机器学习算法(LDA、MLP、RF和SVM)在种子健康状况的自主检测中显示出高准确率(90%至100%)。因此,多光谱图像与机器学习算法相结合可有效筛选出卫生质量优良的花生种子。

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