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Hyperspectral band selection using genetic algorithm and support vector machines for early identification of charcoal rot disease in soybean stems

机译:使用遗传算法和支持向量机的高光谱谱带选择用于大豆茎中炭腐病的早期鉴定

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摘要

BackgroundCharcoal rot is a fungal disease that thrives in warm dry conditions and affects the yield of soybeans and other important agronomic crops worldwide. There is a need for robust, automatic and consistent early detection and quantification of disease symptoms which are important in breeding programs for the development of improved cultivars and in crop production for the implementation of disease control measures for yield protection. Current methods of plant disease phenotyping are predominantly visual and hence are slow and prone to human error and variation. There has been increasing interest in hyperspectral imaging applications for early detection of disease symptoms. However, the high dimensionality of hyperspectral data makes it very important to have an efficient analysis pipeline in place for the identification of disease so that effective crop management decisions can be made. The focus of this work is to determine the minimal number of most effective hyperspectral wavebands that can distinguish between healthy and diseased soybean stem specimens early on in the growing season for proper management of the disease. 111 hyperspectral data cubes representing healthy and infected stems were captured at 3, 6, 9, 12, and 15 days after inoculation. We utilized inoculated and control specimens from 4 different genotypes. Each hyperspectral image was captured at 240 different wavelengths in the range of 383–1032 nm. We formulated the identification of best waveband combination from 240 wavebands as an optimization problem. We used a combination of genetic algorithm as an optimizer and support vector machines as a classifier for the identification of maximally-effective waveband combination.
机译:背景技术木炭腐烂是一种真菌病,在温暖干燥的条件下会thr壮成长,并影响全世界大豆和其他重要农作物的产量。需要鲁棒,自动和一致的疾病症状的早期检测和定量,这对于育种计划的发展对改良品种的开发和作物生产中对实施疾病控制措施以保护产量具有重要意义。当前植物病害表型的方法主要是视觉的,因此是缓慢的并且易于人为错误和变异。对于早发现疾病症状的高光谱成像应用已经引起了越来越多的兴趣。但是,高光谱数据的高维性使得建立有效的分析管线以识别疾病非常重要,这样才能做出有效的作物管理决策。这项工作的重点是确定最有效的高光谱波段的最小数量,这些波段可以在生长期早期区分健康和患病的大豆茎标本,以适当控制该疾病。接种后3、6、9、12和15天捕获了111个代表健康茎和感染茎的高光谱数据立方体。我们利用了来自4种不同基因型的接种标本和对照标本。每个高光谱图像是在383-1032 nm范围内的240个不同波长下捕获的。我们将确定240个波段的最佳波段组合作为优化问题。我们使用遗传算法的组合作为优化器,并使用支持向量机作为分类器,以识别最大有效的波段组合。

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