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Discriminant Analysis of Defective and Non-Defective Field Pea (Pisum sativum L.) into Broad Market Grades Based on Digital Image Features

机译:基于数字图像特征的有缺陷豌豆和无缺陷豌豆进入大市场等级的判别分析

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摘要

Field peas (Pisum sativum L.) are generally traded based on seed appearance, which subjectively defines broad market-grades. In this study, we developed an objective Linear Discriminant Analysis (LDA) model to classify market grades of field peas based on seed colour, shape and size traits extracted from digital images. Seeds were imaged in a high-throughput system consisting of a camera and laser positioned over a conveyor belt. Six colour intensity digital images were captured (under 405, 470, 530, 590, 660 and 850nm light) for each seed, and surface height was measured at each pixel by laser. Colour, shape and size traits were compiled across all seed in each sample to determine the median trait values. Defective and non-defective seed samples were used to calibrate and validate the model. Colour components were sufficient to correctly classify all non-defective seed samples into correct market grades. Defective samples required a combination of colour, shape and size traits to achieve 87% and 77% accuracy in market grade classification of calibration and validation sample-sets respectively. Following these results, we used the same colour, shape and size traits to develop an LDA model which correctly classified over 97% of all validation samples as defective or non-defective.
机译:豌豆(Pisum sativum L.)通常根据种子的外观进行交易,这从主观上定义了广阔的市场等级。在这项研究中,我们建立了客观的线性判别分析(LDA)模型,根据从数字图像中提取的种子颜色,形状和大小特征,对豌豆的市场等级进行分类。种子在高通量系统中成像,该系统由照相机和位于传送带上方的激光组成。为每个种子捕获六张色彩强度数字图像(在405、470、530、590、660和850nm光下),并通过激光在每个像素处测量表面高度。在每个样品的所有种子中汇编颜色,形状和大小性状,以确定中位性状值。有缺陷和无缺陷的种子样品用于校准和验证模型。颜色成分足以将所有无缺陷的种子样品正确分类为正确的市场等级。有缺陷的样品需要结合颜色,形状和尺寸特征,以分别在校准和验证样品集的市场等级分类中达到87%和77%的准确度。根据这些结果,我们使用相同的颜色,形状和大小特征开发了LDA模型,该模型将97%以上的验证样品正确分类为有缺陷或无缺陷。

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