We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Hyperspectral Spatial Frequency Domain Imaging Technique for Soluble Solids Content and Firmness Assessment of Pears.
- Authors
Yang, Yang; Fu, Xiaping; Zhou, Ying
- Abstract
High Spectral Spatial Frequency Domain Imaging (HSFDI) combines high spectral imaging and spatial frequency domain imaging techniques, offering advantages such as wide spectral range, non-contact, and differentiated imaging depth, making it well-suited for measuring the optical properties of agricultural products. The diffuse reflectance spectra of the samples at spatial frequencies of 0 mm - 1 ( R d 0 ) and 0.2 mm - 1 ( R d 0 ) were obtained using the three-phase demodulation algorithm. The pixel-by-pixel inversion was performed to obtain the absorption coefficient ( μ a ) spectra and the reduced scattering coefficient ( μ s ′ ) spectra of the pears. For predicting the SSC and firmness of the pears, these optical properties and their specific combinations were used as inputs for partial least squares regression (PLSR) modeling by combining them with the wavelength selection algorithm of competitive adaptive reweighting sampling (CARS). The results showed that μ a had a stronger correlation with SSC, whereas μ s ′ exhibited a stronger correlation with firmness. Taking the plane diffuse reflectance R d 0 as the comparison object, the prediction results of SSC based on both μ a and the combination of diffuse reflectance at two spatial frequencies ( R d ) were superior (the best R p 2 of 0.90 and R M S E P of 0.41%). Similarly, in the prediction of firmness, the results of μ s ′ , μ a × μ s ′ , and R d 1 were better than that of R d 0 (the best R p 2 of 0.80 and R M S E P of 3.25%). The findings of this research indicate that the optical properties represented by HSFDI technology and their combinations can accurately predict the internal quality of pears, providing a novel technical approach for the non-destructive internal quality evaluation of agricultural products.
- Subjects
PARTIAL least squares regression; SPECTRAL imaging; OPTICAL properties; FARM produce; ABSORPTION coefficients
- Publication
Horticulturae, 2024, Vol 10, Issue 8, p853
- ISSN
2311-7524
- Publication type
Article
- DOI
10.3390/horticulturae10080853