Zia Ali, Husnain Muhammad, Buck Sally, Richetti Jonathan, Hulm Elizabeth, Ral Jean-Philippe, Rolland Vivien, Sirault Xavier
Commonwealth Scientific and Industrial Research Organisation (CSIRO), Australia.
College of Science and School of Computing, Australian National University, Australia.
Curr Res Food Sci. 2025 Mar 21;10:101030. doi: 10.1016/j.crfs.2025.101030. eCollection 2025.
The growing demand for sustainable, nutritious, and environmentally friendly food sources has placed chickpea flour as a vital component in the global shift to plant-based diets. However, the inherent variability in the composition of chickpea flour, influenced by genetic diversity, environmental conditions, and processing techniques, poses significant challenges to standardisation and quality control. This study explores the integration of deep learning models with near-infrared (NIR) spectroscopy to improve the accuracy and efficiency of chickpea flour quality assessment. Using a dataset comprising 136 chickpea varieties, the research compares the performance of several state-of-the-art deep learning models, including Convolutional Neural Networks (CNNs), Vision Transformers (ViTs), and Graph Convolutional Networks (GCNs), and compares the most effective model, CNN, against the traditional Partial Least Squares Regression (PLSR) method. The results demonstrate that CNN-based models outperform PLSR, providing more accurate predictions for key quality attributes such as protein content, starch, soluble sugars, insoluble fibres, total lipids, and moisture levels. The study highlights the potential of AI-enhanced NIR spectroscopy to revolutionise quality assessment in the food industry by offering a non-destructive, rapid, and reliable method for analysing chickpea flour. Despite the challenges posed by the limited dataset, deep learning models exhibit capabilities that suggest that further advancements would allow their industrial applicability. This research paves the way for broader applications of AI-driven quality control in food production, contributing to the development of more consistent and high-quality plant-based food products.
对可持续、营养且环保的食物来源的需求不断增长,使得鹰嘴豆粉成为全球向植物性饮食转变的重要组成部分。然而,受遗传多样性、环境条件和加工技术影响,鹰嘴豆粉成分存在固有变异性,这给标准化和质量控制带来了重大挑战。本研究探索将深度学习模型与近红外(NIR)光谱相结合,以提高鹰嘴豆粉质量评估的准确性和效率。该研究使用包含136个鹰嘴豆品种的数据集,比较了几种最先进的深度学习模型的性能,包括卷积神经网络(CNN)、视觉Transformer(ViT)和图卷积网络(GCN),并将最有效的模型CNN与传统的偏最小二乘回归(PLSR)方法进行比较。结果表明,基于CNN的模型优于PLSR,能更准确地预测关键质量属性,如蛋白质含量、淀粉、可溶性糖、不溶性纤维、总脂质和水分含量。该研究突出了人工智能增强的近红外光谱通过提供一种无损、快速且可靠的鹰嘴豆粉分析方法,来革新食品行业质量评估的潜力。尽管数据集有限带来了挑战,但深度学习模型展现出的能力表明,进一步的进展将使其具备工业适用性。这项研究为人工智能驱动的质量控制在食品生产中的更广泛应用铺平了道路,有助于开发更稳定、高质量的植物性食品。