基于机器视觉和分水岭分割的腐鲜菜花检测

Q4 Biochemistry, Genetics and Molecular Biology
Jianxin Xue, Liang Huang, Bingyu Mu, Kai Wang, Zihui Li, Haixia Sun, Huamin Zhao, Zezhen Li
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引用次数: 1

摘要

:本研究采用机器视觉技术分离样品,检测鲜切花椰菜的腐烂程度。首先,利用改进的分水岭算法对鲜切菜花样本进行分割和单样本提取;然后,利用三色模型、灰度共生矩阵和两种特征提取算法提取图像的颜色、纹理和光谱特征参数。同时,建立了偏最小二乘判别分析(PLS-DA)和极限学习机(ELM)判别模型。PLS-DA和ELM鉴别模型对腐烂样品的鉴别准确率分别为95%和90.9%。根据腐烂区域的大小划分腐烂等级,利用区域生长算法和“Sobel”算子识别腐烂菜花样本的轮廓和特征区域。最后,实现了花椰菜样品腐烂程度的检测与鉴定。结果表明,机器视觉技术可以对粘接的新鲜菜花样品进行分割,可用于完整菜花和腐烂菜花的定性和定量鉴别
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Rotten Fresh-Cut Cauliflowers based on Machine Vision Technology and Watershed Segmentation Method
: In this study, machine vision technology was used to separate the samples and detect the rotting degrees of fresh-cut cauliflowers. First, the improved watershed algorithm was used for the segmentation of fresh-cut cauliflower samples and the extraction of single-sample. Then, three-color models, a gray co-occurrence matrix, and two feature extraction algorithms were used to extract the color, texture, and spectral feature parameters of the images. At the same time, the Partial Least Squares Discriminant Analysis (PLS-DA) and Extreme Learning Machines (ELM) discriminant models were established. The identification accuracy of PLS-DA and ELM discriminant models for rotting samples was 95 and 90.9%, respectively. Moreover, according to the size of rotten areas, the rotting grades were divided and the contours and feature areas of rotten cauliflower samples were identified by the region growth algorithm and the “Sobel” operator. Finally, the detection and identification of the rotting degree of cauliflower samples were realized. The results showed that machine vision technology can segment the cohesive fresh-cut cauliflower samples and can be used for qualitative and quantitative identification of the intact and rotten cauliflower
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来源期刊
American Journal of Biochemistry and Biotechnology
American Journal of Biochemistry and Biotechnology Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
0.70
自引率
0.00%
发文量
27
期刊介绍: :: General biochemistry :: Patho-biochemistry :: Evolutionary biotechnology :: Structural biology :: Molecular and cellular biology :: Molecular medicine :: Cancer research :: Virology :: Immunology :: Plant molecular biology and biochemistry :: Experimental methodologies
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