Mahdi Rashvand , Mehrad Nikzadfar , Sabina Laveglia , Hedie mirmohammadrezaei , Ahmad Bozorgi , Giuliana Paterna , Attilio Matera , Tania Gioia , Giuseppe Altieri , Giovanni Carlo Di Renzo , Francesco Genovese
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Advancing legume quality assessment through machine learning: Current trends and future directions
Legume postharvest assessment is a critical component of maintaining quality, enhancing nutritional value, and ensuring the produce meets market requirements. The traditional methods for estimating legume quality are not effective in terms of accuracy, scalability, and efficiency. Machine Learning (ML) has come forward as a very transforming solution that makes use of advanced algorithms combined with intelligent sensors for the optimization of legumes processes. This review paper targets tracking the metamorphic role of ML in qualification related to legumes postharvest processing (PTP). Sorting, defect detection, nutritional evaluation, authentication, and monitoring moisture-the different stages at which legumes have been qualified by the use of ML-are discussed herein. In addition, this paper highlights advanced ML techniques, especially their interaction with other intelligent sensors, as in the case of machine vision and spectroscopy systems. In this respect, the paper is the roadmap for leveraged applications of ML to improve legume quality assessment across the entire process chain. It identifies best practices, innovative methodologies, and practical applications that form the basis of actionable insight into enhancing quality control processes.
期刊介绍:
The Journal of Food Composition and Analysis publishes manuscripts on scientific aspects of data on the chemical composition of human foods, with particular emphasis on actual data on composition of foods; analytical methods; studies on the manipulation, storage, distribution and use of food composition data; and studies on the statistics, use and distribution of such data and data systems. The Journal''s basis is nutrient composition, with increasing emphasis on bioactive non-nutrient and anti-nutrient components. Papers must provide sufficient description of the food samples, analytical methods, quality control procedures and statistical treatments of the data to permit the end users of the food composition data to evaluate the appropriateness of such data in their projects.
The Journal does not publish papers on: microbiological compounds; sensory quality; aromatics/volatiles in food and wine; essential oils; organoleptic characteristics of food; physical properties; or clinical papers and pharmacology-related papers.