刺身食品的多光谱识别与分类

Ismail Parewai, M. As, Tsunenori Mine, Mario Koeppen
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引用次数: 2

摘要

食品质量检验是我们日常生活中必不可少的因素。食品检验是对来自不同来源的异质食品数据进行分析,以进行感知、识别、判断和监控。本研究旨在为基于外部数据检测的刺身食品损伤检测与分类提供一套准确的图像处理技术系统。基于多光谱技术获取的可见和不可见系统,对外部纹理进行识别。提出了灰度共生矩阵(GLCM)模型对图像纹理特征进行分析,并采用人工神经网络(ANN)方法对图像进行分类。本研究表明,多光谱技术是一种有用的刺身食品评估系统,实验也表明,不可见通道在分类模型中具有潜力,因为它隐藏了人眼不清楚可见的纹理特征。
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Identification and Classification of Sashimi Food Using Multispectral Technology
?Food quality inspection is an essential factor in our daily lives. Food inspection is analyzing heterogeneous food data from different sources for perception, recognition, judgment, and monitoring. This study aims to provide an accurate system in image processing techniques for the inspection and classification of sashimi food damage based on detecting external data. The external texture was identified based on the visible and invisible system that was acquired using multispectral technology. We proposed the Grey Level Co-occurrence Matrix (GLCM) model for analysis of the texture features of images and the classification process was performed using Artificial Neural Network (ANN) method. This study showed that multispectral technology is a useful system for the assessment of sashimi food and the experimental also indicates that the invisible channels have the potential in the classification model, since the hidden texture features that are not clearly visible to the human eye.
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