可见光-近红外高光谱成像技术在农产品检测中的应用

Nannan Hu, Dongmei Wei, Liren Zhang, Jingjing Wang, Huaqiang Xu, Yuefeng Zhao
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引用次数: 2

摘要

高光谱成像系统可以在连续波段内对目标进行测量,可以同时捕获目标的空间信息和光谱信息。因此,高光谱图像不仅可以通过空间信息反映目标的外部特征,还可以通过光谱信息反映目标的内部品质。基于这一优势,高光谱成像技术在农产品质量检测中得到了广泛的应用。本文首先总结了基于高光谱成像的不同成像方式在不同条件下的应用。然后总结了光谱预处理的方法及其在高光谱系统中的应用,乘散校正、标准正态变量、savitzky-golay平滑、中值滤波和光谱微分都能有效地校正不同背景下的光谱。再次,本文总结了几种常用的高光谱数据约简方法,其中主成分分析法、偏最小二乘法、最优指标因子法、逐次投影法和负荷因子法在农产品高光谱数据约简中应用广泛,这些方法都可以通过特征提取或特征选择来降低数据维数;不仅简化了计算过程,而且通过减少冗余信息来优化结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Vis-NIR hyperspectral imaging in agricultural products detection
Hyperspectral imaging system can be used to measure the object in a continuous waveband, which can capture the spatial information and spectral information simultaneously. So hyperspectral images can not only reflect the external characteristics of the object through the spatial information, but also reflect its internal qualities of the spectral information. Based on this advantage, hyperspectral imaging has been widely used in the quality detection of agricultural products. Firstly, this paper summarizes the application of different imaging modes under different conditions based on hyperspectral imaging. Then it sums up the methods of spectral preprocessing and their applications in hyperspectral systems, the multiplicative scatter correction, the standard normal variable, the savitzky-golay smoothing, median-filter and the spectral differential all can correct the spectrum effectively in diverse backgrounds. Again, in this paper some common methods of hyperspectral data reduction are summarized either, the methods of principal component analysis, partial least squares, optimum index factor, successive projection algorithm and load factor are all widely used in reduction of hyperspectral data in agricultural products, these methods mentioned above can decrease the data dimension by feature extraction or feature selection, not only to simplify the computational process but to optimize conclusions through reduce redundancy information.
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