Article ID Journal Published Year Pages File Type
1711663 Biosystems Engineering 2011 8 Pages PDF
Abstract

Alpha-amylase activity in individual Canadian Western Red Spring (CWRS) wheat kernels was predicted using spectral information across the wavelength region 1235–2450 nm. Reflectance spectra were collected from an SWIR (short-wavelength infrared) hyperspectral imaging system and absorbance spectra were recorded from an Fourier transform near-infrared (FT-NIR) spectrometer on the same kernels. The partial least squares (PLS) regression technique was used to model the alpha-amylase enzyme activity levels to the spectral information. The prediction accuracy varied with the pre-processing methods applied to the regressor and regressand. The highest coefficient of determination (r2) value obtained from the SWIR hyperspectral imaging system was 0.88 and 0.82 from the FT-NIR instrument. The imaging approach was more successful because it also had the advantage of being able to localise the region where spectra were extracted from.

► FT-near-infrared spectroscopy and short wavelength infrared hyper-spectral imaging were used to detect alpha-amylase activity in single wheat kernels at low levels. ► Both methods have advantages for the detection of sprouting at early stages in wheat. ► The FT-NIR system provides spectra with less noise than the SWIR system, although the SWIR system allows for obtaining spectra from a small part of the kernel surface. ► The SWIR imaging method gave more accurate predictions of alpha-amylase activity than the FT-NIR method. ► The imaging method has the added potential of measuring spatial information which can be used to detect other types of damage in wheat during the grading process.

Related Topics
Physical Sciences and Engineering Engineering Control and Systems Engineering
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