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Multispectral Sensor for In-Situ Cotton Fiber Quality Measurement

机译:用于现场棉纤维质量测量的多光谱传感器

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摘要

Reflectance spectra of cotton fiber samples having different fiber quality levels were measured with a high-resolution spectrophotometer, processed with waveband averaging and wavelet analysis, and then related to micronaire with multiple linear regression. Regression models indicated that micronaire had a close relationship (R 2 = 0.89) with reflectance at seven 100 nm wavebands (1120, 1296, 1550, 1664, 1852, 2020, and 2340 nm). In the wavelet-based analysis, six wavelet-coefficient regressors were identified and entered into a regression model. This model also indicated a very close relationship between micronaire and reflectance spectra (R 2 = 0.97). A prototype cotton fiber quality sensor was developed based on the characteristics of the cotton fiber reflectance spectrum and the wavelet-based multiple-regression analyses. The sensor consists of a VisGaAs camera, optical bandpass filters, a halogen light source, and an image collection and processing system. Images of lint samples at three near-infrared (NIR) wavebands (1450, 1550, and 1600 nm) were acquired and analyzed with two methods to determine the relationship between image pixel values and cotton fiber micronaire. One method involved ROI (region-of-interest) pixel-value data, while the other involved histogram-based pixel-value data. Results showed that the sensor was capable of accurately estimating the fiber micronaire (R 2 = 0.99 for ROI data, and R 2 = 0.99 for histogram-based data). This sensor could potentially be used for measuring cotton fiber quality along with spatial data from a GPS receiver as the cotton is harvested in the field, making it possible to generate cotton fiber quality maps. The sensor also has the potential to be used for segregating cotton at harvest based on fiber quality.
机译:用高分辨率分光光度计测量具有不同纤维质量水平的棉纤维样品的反射光谱,进行波段平均和小波分析处理,然后通过多重线性回归与马克隆值相关。回归模型表明,马克隆值与七个100 nm波段(1120、1296、1550、1664、1852、2020和2340 nm)的反射率具有密切关系(R 2 = 0.89)。在基于小波的分析中,确定了六个小波系数回归变量并将其输入回归模型。该模型还表明马克隆值和反射光谱之间存在非常密切的关系(R 2 = 0.97)。基于棉纤维反射光谱的特征和基于小波的多元回归分析,开发了一种原型棉纤维质量传感器。该传感器由VisGaAs相机,光学带通滤光片,卤素光源以及图像采集和处理系统组成。采集三个近红外(NIR)波段(1450、1550和1600 nm)处的皮棉样品图像,并使用两种方法进行分析,以确定图像像素值与棉纤维马克隆值之间的关系。一种方法涉及ROI(关注区域)像素值数据,而另一种方法涉及基于直方图的像素值数据。结果表明,该传感器能够准确估计纤维马克隆值(对于ROI数据,R 2 = 0.99;对于基于直方图的数据,R 2 = 0.99)。当田间收割棉花时,该传感器可能会用于测量棉纤维质量以及GPS接收器的空间数据,从而有可能生成棉纤维质量图。该传感器还具有根据纤维质量在收获时隔离棉花的潜力。

著录项

  • 来源
    《Transactions of the ASABE》 |2008年第6期|p.2201-2208|共8页
  • 作者单位

    The authors are Ruixiu Sui, ASABE Member Engineer , Research Associate Professor, and J. Alex Thomasson, ASABE Member Engineer, Professor, Department of Biological and Agricultural Engineering, Texas A&M University, College Station, Texas;

    Yufeng Ge, ASABE Member Engineer, Postdoctoral Research Associate, and Cristine Morgan, Assistant Professor, Department of Soil and Crop Sciences, Texas A&M University, College Station, Texas. Corresponding author: Ruixiu Sui, Department of Biological and Agricultural Engineering, Texas A&M University, 2117 TAMU, College Station, TX 77843-2117;

    phone: 979-845-7681;

    fax: 979-847-8627;

    email: rsui@tamu.edu.;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cotton, Fiber quality, NIR camera, Precision agriculture, Sensor;

    机译:棉;纤维质量;近红外相机;精密农业;传感器;

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