Romaniello Roberto, Barrasso Antonietta Eliana, Perone Claudio, Tamborrino Antonia, Berardi Antonio, Leone Alessandro
Department of Agriculture, Food, Natural Resource and Engineering, University of Foggia, 71122 Foggia, Italy.
Department of Soil, Plant and Food Science (DISSPA), University of Bari Aldo Moro, Via Amendola 165/a, 70126 Bari, Italy.
Foods. 2024 Jan 26;13(3):404. doi: 10.3390/foods13030404.
The market demand for gluten-free food is increasing due to the growing gluten sensitivity and coeliac disease (CD) in the population. The market requires grass-free cereals to produce gluten-free food. This requires sorting methods that guarantee the perfect separation of gluten contaminants from the legumes. The objective of the research was the development of an optical sorting system based on hyperspectral image processing, capable of identifying the spectral characteristics of the products under investigation to obtain a statistical classifier capable of enabling the total elimination of contaminants. The construction of the statistical classifier yielded excellent results, with a 100% correct classification rate of the contaminants. Tests conducted subsequently on an industrial optical sorter validated the result of the preliminary tests. In fact, the application of the developed classifier was able to correctly select the contaminants from the mass of legumes with a correct classification percentage of 100%. A small proportion of legumes was misclassified as contaminants, but this did not affect the scope of the work. Further studies will aim to reduce even this small share of waste with investigations into optimising the seed transport systems of the optical sorter.
由于人群中麸质敏感性和乳糜泻(CD)病例不断增加,无麸质食品的市场需求正在上升。市场需要无麸质谷物来生产无麸质食品。这就需要有能保证从豆类中完美分离麸质污染物的分拣方法。该研究的目标是开发一种基于高光谱图像处理的光学分拣系统,该系统能够识别被研究产品的光谱特征,从而获得一个能够完全消除污染物的统计分类器。统计分类器的构建产生了优异的结果,污染物的正确分类率达到100%。随后在工业光学分拣机上进行的测试验证了初步测试的结果。事实上,应用所开发的分类器能够从大量豆类中正确挑选出污染物,正确分类率为100%。一小部分豆类被误分类为污染物,但这并不影响工作范围。进一步的研究将致力于通过优化光学分拣机的种子输送系统来减少这一小部分浪费。