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首页> 外文期刊>Sensing and Instrumentation for Food Quality and Safety >Identification of wheat classes at different moisture levels using near-infrared hyperspectral images of bulk samples.
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Identification of wheat classes at different moisture levels using near-infrared hyperspectral images of bulk samples.

机译:使用散装样品的近红外高光谱图像识别不同水分含量下的小麦类别。

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Wheat classes at different moisture levels need to be identified to accurately segregate, properly dry, and safely store before processing. This paper introduces a new method using a near infrared (NIR) hyperspectral imaging system (960-1,700 nm) to identify five western Canadian wheat classes (Canada Western Red Spring (CWRS), Canada Western Extra Strong (CWES), Canada Western Red Winter (CWRW), Canada Western Soft White Spring (CWSWS), and Canada Western Hard White Spring (CWHWS)) and moisture levels, independent of each other. The objectives of this research also included identification of each wheat class at specific moisture levels of 12, 14, 16, 18, and 20%. Bulk samples of wheat were scanned in the 960-1,700 nm wavelength region at 10 nm intervals using an Indium Gallium Arsenide (InGaAs) NIR camera. Spectral feature data sets were developed by calculating relative reflectance intensities of the scanned images. Principal components analysis was used to generate scores images and loadings plots. The NIR wavelengths in the region of 1,260-1,360 nm were important based on the loadings plot of first principal component. In statistical classification, the linear and quadratic discriminant analyses were used to classify wheat classes giving accuracies of 61-97 and 82-99%, respectively, independent of moisture contents. It was also found that the linear discriminant analysis (LDA) and quadratic discriminant analysis (QDA) could classify moisture contents with classification accuracies of 89-91 and 91-99%, respectively, independent of wheat classes. Once wheat classes were identified, classification accuracies of 90-100 and 72-99% were observed using LDA and QDA, respectively, when identifying specific moisture levels. Spectral features at key wavelengths of 1,060, 1,090, 1,340, and 1,450 nm were ranked at top in classifying wheat classes with different moisture contents. This work shows that hyperspectral imaging techniques can be used for rapidly identifying the wheat classes even at varying moisture levels.
机译:在加工之前,需要确定不同水分含量的小麦类别,以准确隔离,适当干燥和安全存放。本文介绍了一种使用近红外(NIR)高光谱成像系统(960-1,700 nm)的新方法,该方法可以识别出加拿大西部的五种小麦类型(加拿大西部红春(CWRS),加拿大西部特强(CWES),加拿大西部红冬(CWRW),加拿大西部软白泉(CWSWS)和加拿大西部硬白泉(CWHWS))和湿度水平相互独立。这项研究的目标还包括确定特定水分含量为12%,14%,16%,18%和20%的每种小麦。使用砷化铟镓(InGaAs)NIR摄像头以10 nm的间隔在960-1,700 nm波长范围内扫描大块小麦样品。通过计算扫描图像的相对反射强度来开发光谱特征数据集。主成分分析用于生成分数图像和负荷图。根据第一主成分的载荷图,在1,260-1,360 nm范围内的NIR波长很重要。在统计分类中,线性和二次判别分析用于对小麦类别进行分类,其准确度分别为61-97%和82-99%,而与水分含量无关。还发现线性判别分析(LDA)和二次判别分析(QDA)可以分别以89-91%和91-99%的分类精度对水分含量进行分类,而与小麦类别无关。一旦确定了小麦的种类,当确定特定的水分含量时,使用LDA和QDA分别观察到90-100%和72-99%的分类精度。在对具有不同水分含量的小麦类别进行分类时,关键波长为1,060、1,090、1,340和1,450 nm的光谱特征排名最高。这项工作表明,即使在不同的水分含量下,高光谱成像技术也可以用于快速识别小麦种类。

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