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Published in: Natural Computing 1/2023

16-08-2022

Deep learning networks with rough-refinement optimization for food quality assessment

Authors: Jin Zhou, Kang Zhou, Gexiang Zhang, Qiyu Liu, Wangyang Shen, Weiping Jin

Published in: Natural Computing | Issue 1/2023

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Abstract

Food quality assessment is an important part of the food industry. The traditional food quality assessment technologies have the limitations of inconsistent and different technical defects for each method. Data mining technology has significant advantages in dealing with the problems of uncertainty and fuzziness. Therefore, this study proposes a food quality assessment model based on data mining, which aims to realize the standardization and consistency of food quality assessment, and can achieve or exceed the accuracy of existing technologies, so as to solve the obvious problems existing in traditional assessment methods. The core of the proposed model is to design a deep learning framework based on double layer rough-refinement optimization. The first layer is rough optimization, which introduces the thought of multi-objective optimization to optimize the topological structure of neural networks with various candidate types and candidate depths. The second layer is refinement adjustment, which uses meta heuristic algorithm to globally optimize the weight parameters of the network model. The combination of rough and refinement optimization can greatly reduce the computation of overall simultaneous optimization and globally optimize the neural network model with the highest accuracy from the neural network type, topology, and network parameters. Two kinds of food quality assessment problems are used to simulate and verify the proposed deep learning framework. The results prove that the framework is effective, feasible, and adaptability, and the proposed assessment model can well solve different types of food quality assessments.

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Metadata
Title
Deep learning networks with rough-refinement optimization for food quality assessment
Authors
Jin Zhou
Kang Zhou
Gexiang Zhang
Qiyu Liu
Wangyang Shen
Weiping Jin
Publication date
16-08-2022
Publisher
Springer Netherlands
Published in
Natural Computing / Issue 1/2023
Print ISSN: 1567-7818
Electronic ISSN: 1572-9796
DOI
https://doi.org/10.1007/s11047-022-09890-6

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