Journal of Food Engineering, Vol.174, 75-84, 2016
Determination of total acid content and moisture content during solid-state fermentation processes using hyperspectral imaging
Total acid content (TAC) and moisture content (MC) are very important parameters during Solid-State Fermentation (SSF) processes. The feasibility of using hyperspectral imaging (HSI) technology for predicting TAC and MC in vinegar cultures during SSF processes was investigated. Prediction models were constructed using variables selected from spectral and spatial data from associated 3-D hyperspectral datacubes to predict the relative content of TAC and MC for each pixel in the hyperspectral image. Models were developed using genetic algorithm (GA) optimization combined with partial least squares regression (PLS) dependent on the spectral variables yielded good prediction results for both TAC and MC. The determination coefficients (42) for TAC and MC were 0.8565 and 0.8162, respectively. Finally, the distribution maps of TAC and MC for a vinegar culture sample were obtained. These distribution maps could be implemented to estimate the uniformity of fermentation products during SSF. (C) 2015 Elsevier Ltd. All rights reserved.
Keywords:Hyperspectral imaging;Solid-state fermentation;Principal component analysis;Partial least-squares;Genetic algorithm;Distribution