Detection of early decayed oranges by structured-illumination reflectance imaging coupling with texture feature classification models
文献类型: 外文期刊
作者: Cai, Zhonglei 1 ; Huang, Wenqian 2 ; Wang, Qingyan 2 ; Li, Jiangbo 1 ;
作者机构: 1.Shihezi Univ, Coll Mech & Elect Engn, Shihezi, Peoples R China
2.Beijing Acad Agr & Forestry Sci, Intelligent Equipment Res Ctr, Beijing, Peoples R China
关键词: citrus; early decay detection; structured light imaging; image processing; classification models
期刊名称:FRONTIERS IN PLANT SCIENCE ( 影响因子:6.627; 五年影响因子:7.255 )
ISSN: 1664-462X
年卷期: 2022 年 13 卷
页码:
收录情况: SCI
摘要: Citrus fruits are susceptible to fungal infection after harvest. To reduce the economic loss, it is necessary to reject the infected citrus fruit before storage and transportation. However, the infected area in the early stage of decay is almost invisible on the fruit surface, so the detection of early decayed citrus is very challenging. In this study, a structured-illumination reflectance imaging (SIRI) system combined with a visible light-emitting diode (LED) lamp and a monochrome camera was developed to detect early fungal infection in oranges. Under sinusoidal modulation illumination with spatial frequencies of 0.05, 0.15, and 0.25 cycles mm(-1), three-phase-shifted images with phase offsets of - 2 pi/3, 0, and 2 pi/3 were acquired for each spatial frequency. The direct component (DC) and alternating component (AC) images were then recovered by image demodulation using a three-phase-shifting approach. Compared with the DC image, the decayed area can be clearly identified in the AC image and RT image (AC/DC). The optimal spatial frequency was determined by analyzing the AC image and pixel intensity distribution. Based on the texture features extracted from DC, AC, and RT images, four kinds of classification models including partial least square discriminant analysis (PLS-DA), support vector machine (SVM), least squares-support vector machine (LS-SVM), and k-nearest neighbor (KNN) were established to detect the infected oranges, respectively. Model optimization was also performed by extracting important texture features. Compared to all models, the PLS-DA model developed based on eight texture features of RT images achieved the optimal classification accuracy of 96.4%. This study showed for the first time that the proposed SIRI system combined with appropriate texture features and classification model can realize the early detection of decayed oranges.
- 相关文献
作者其他论文 更多>>
-
Determination of the SSC in oranges using Vis-NIR full transmittance hyperspectral imaging and spectral visual coding: A practical solution to the scattering problem of inhomogeneous mixtures
作者:Cai, Letian;Li, Jiangbo;Zhang, Yizhi;Hao, Haoyuan;Cai, Letian;Zhang, Junyi;Zhang, Hailiang;Zhang, Yizhi
关键词:Citrus; SSC detection; Hyperspectral transmittance imaging; Spectral visual coding; Feature selection
-
Hyperspectral transmittance imaging detection of early decayed oranges caused by Penicillium digitatum using NFINDR-JMSAM algorithm with spectral feature separating
作者:Cai, Letian;Chen, Liping;Li, Xuetong;Zhang, Yizhi;Shi, Ruiyao;Li, Jiangbo;Cai, Letian
关键词:Citrus; Decay detection; Hyperspectral transmittance imaging; NFINDR-JMSAM; Spectral separation
-
Construction of a stable YOLOv8 classification model for apple bruising detection based on physicochemical property analysis and structured-illumination reflectance imaging
作者:Zhang, Junyi;Chen, Liping;Cai, Zhonglei;Shi, Ruiyao;Cai, Letian;Li, Jiangbo;Zhang, Junyi;Luo, Liwei;Yang, Xuhai;Li, Jiangbo
关键词:Apple; Bruising detection; Physicochemical property analysis; Structured-illumination reflectance imaging; Deep learning model
-
Combining dual-wavelength laser-induced fluorescence hyperspectral imaging with mutual information decomposition and redundancy elimination method to detect Aflatoxin B1 of individual maize kernels
作者:Fan, Yaoyao;Kang, Jian;Chen, Liping;Fan, Yaoyao;Yao, Xueying;Wang, Zheli;Long, Yuan;Chen, Liping;Huang, Wenqian;Tian, Xi;Tian, Xi
关键词:Dual-wavelength; Fluorescence hyperspectral imaging; Mutual information; Information decomposition; Maize kernels; Aflatoxin B1
-
Smartphone-assisted fluorescent film based on the Flu grafted on Eu-MOF for real-time monitoring of fresh-cut fruit freshness
作者:Zhang, Zhepeng;Gao, Mingjie;Zou, Xiaobo;Guo, Zhiming;Zhang, Liang;Li, Jiangbo;El-Seedi, Hesham R.;Guo, Zhiming;El-Seedi, Hesham R.
关键词:Metal-organic framework; Grafted materials; Multifunctional filler; Fluorescence film; Fresh-cut fruits; Smartphone application
-
Navigation line detection algorithm for corn spraying robot based on improved LT-YOLOv10s
作者:Diao, Zhihua;Ma, Shushuai;Li, Xingyi;Zhao, Suna;He, Yan;Li, Jiangbo;Zhang, Jingcheng;Zhang, Baohua;Jiang, Liying;Jiang, Liying
关键词:Deep learning; Corn spraying robot; Navigation line detection; Lightweight network
-
Data Fusion Strategy for Nondestructive Detection of Aflatoxin B1 Content in Single Maize Kernel Using Dual-Wavelength Laser-Induced Fluorescence Hyperspectral Imaging
作者:Yao, Xueying;Zhao, Chunjiang;Tian, Xi;Yao, Xueying;Yao, Xueying;Fan, Yaoyao;Wang, Qingyan;Huang, Wenqian;Zhao, Chunjiang;Tian, Xi
关键词:Maize; Fluorescence hyperspectral imaging; Aflatoxin B1; Nondestructive detection; Data fusion strategy; Dual-wavelength laser-induced fluorescence



