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Utilization of computer vision and multispectral imaging techniques for classification of cowpea (Vigna unguiculata) seeds

机译:利用计算机视觉和多光谱成像技术对cow豆(Vigna unguiculata)种子进行分类

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摘要

BackgroundThe traditional methods for evaluating seeds are usually performed through destructive sampling followed by physical, physiological, biochemical and molecular determinations. Whilst proven to be effective, these approaches can be criticized as being destructive, time consuming, labor intensive and requiring experienced seed analysts. Thus, the objective of this study was to investigate the potential of computer vision and multispectral imaging systems supported with multivariate analysis for high-throughput classification of cowpea (Vigna unguiculata) seeds. An automated computer-vision germination system was utilized for uninterrupted monitoring of seeds during imbibition and germination to identify different categories of all individual seeds. By using spectral signatures of single cowpea seeds extracted from multispectral images, different multivariate analysis models based on linear discriminant analysis (LDA) were developed for classifying the seeds into different categories according to ageing, viability, seedling condition and speed of germination.
机译:背景技术传统的种子评估方法通常是通过破坏性采样,然后进行物理,生理,生化和分子测定来进行的。尽管这些方法被证明是有效的,但可以被批评为破坏性,耗时,劳动密集型并且需要经验丰富的种子分析人员。因此,本研究的目的是研究计算机视觉和多光谱成像系统在多变量分析支持下对cow豆(Vigna unguiculata)种子的高通量分类的潜力。利用自动化的计算机视觉发芽系统在吸水和发芽过程中对种子进行不间断的监测,以识别所有单个种子的不同类别。利用从多光谱图像中提取的单个single豆种子的光谱特征,开发了基于线性判别分析(LDA)的不同多元分析模型,用于根据老化,生存能力,幼苗条件和发芽速度将种子分类为不同的类别。

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