Fast detection of the early decay in oranges using visible-LED structured-illumination imaging combined with spiral phase transform and feature-based classification model
Abstract
Keywords: oranges, early decay detection, structured-illumination imaging, spiral phase transform, classification model
DOI: 10.25165/j.ijabe.20241703.8614
Citation: Cai Z L, Sun C J, Zhang Y Z, Shi R Y, Zhang J Y, Zhang H L, et al. Fast detection of the early decay in oranges using visible-LED structured-illumination imaging combined with spiral phase transform and feature-based classification model. Int J Agric & Biol Eng, 2024; 17(3): 185-192.
Keywords
Full Text:
PDFReferences
Zhang H L, Chen Y, Liu X M, Huang Y F, Zhan B S, Luo W. Identification of common skin defects and classification of early decayed citrus using hyperspectral imaging technique. Food Analytical Methods, 2021; 14(6): 1176–1193.
Cubero S, Lee W S, Aleixos N, Albert F, Blasco J. Automated systems based on machine vision for inspecting citrus fruits from the field to postharvest-a review. Food Bioprocess Technology, 2016; 9(10): 1623–1639.
Li J B, Huang W Q, Tian X, Wang C P, Fan S X, Zhao C J. Fast detection and visualization of early decay in citrus using Vis-NIR hyperspectral imaging. Computers and Electronics in Agriculture, 2016; 127: 582–592.
Golzarian M R, Ghooshkhaneh N G, Mamarabadi M. Detection and classification of citrus green mold caused by Penicillium digitatum using multispectral imaging. Journal of the Science of Food and Agriculture, 2018; 98(9): 3542–3550.
Lorente D, Zude M, Regen C, Palou L, Gomez-Sanchis J, Blasco J. Early decay detection in citrus fruit using laser-light backscattering imaging. Postharvest Biology and Technology, 2013; 86: 424–430.
Lorente D, Zude M, Idler C, Gómez-Sanchis J, Blasco J. Laser-light backscattering imaging for early decay detection in citrus fruit using both a statistical and a physical model. Journal of Food Engineering, 2015; 154: 76–85.
Tian X, Fan S X, Huang W Q, Wang Z L, Li J B. Detection of early decay on citrus using hyperspectral transmittance imaging technology coupled with principal component analysis and improved watershed segmentation algorithms. Postharvest Biology and Technology, 2020; 161: 111071.
Cai Z L, Huang W Q, Wang Q Y, Li J B. Detection of early decayed oranges by structured-illumination reflectance imaging coupling with texture feature classification models. Frontiers in Plant Science, 2022; 13: 952942.
Mei M W, Li J B. An overview on optical non-destructive detection of bruises in fruit: technology, method, application, challenge and trend. Computers and Electronics in Agriculture, 2023; 213: 108195.
Lorente D, Escandell-Montero P, Cubero S, Gómez-Sanchis J, Blasco J. Visible-NIR reflectance spectroscopy and manifold learning methods applied to the detection of fungal infections on citrus fruit. Journal of Food Engineering, 2015; 163: 17–24.
Kurita M. Kondo N, Shimizu H, Ling P, Falzea P D, Shiigi T, et al. A double image acquisition system with visible and UV LEDs for citrus fruit. Journal of Robotics and Mechatronics, 2009; 21(4): 533–540
Slaughter D C, Obenland D M, Thompson J F, Arpaia M L, Margosan D A. Non-destructive freeze damage detection in oranges using machine vision and ul-traviolet fluorescence. Postharvest Biology and Technology, 2008; 48: 341–346.
Obenland D, Margosan D, Smilanick J L. Ultraviolet fluorescence to identify navel oranges with poor peel quality and decay. HortTechnology, 2010; 20(6): 991–995.
Luo W, Fan G Z, Tian P, Dong W T, Zhang H L, Zhan B S. Spectrum classification of citrus tissues infected by fungi and multispectral image identification of early rotten oranges. Spectrochim Acta Part A: Molecular and Biomoleculr Spectroscopy, 2022; 279: 121412.
Fan S X, Liang, X T, Huang W Q, Zhang V J, Pang Q, He X, et al. Real-time defects detection for apple sorting using NIR cameras with pruning-based YOLOV4 network. Computers and Electronics in Agriculture, 193: 106715.
Lu Y Z, Li R, Lu R F. Structured-illumination reflectance imaging (SIRI) for enhanced detection of fresh bruises in apples. Postharvest Biology and Technology, 2016; 117: 89–93.
Cai Z L, Sun C J, Zhang H L, Zhang Y Z, Li J B. Developing universal classification models for the detection of early decayed citrus by structured-illumination reflectance imaging coupling with deep learning methods. Postharvest Biology and Technology, 2024; 210: 112788.
Sun Y, Lu R F, Lu Y Z, Tu K, Pan LQ. Detection of early decay in peaches by structured illumination reflectance imaging. Postharvest Biology and Technol, 2019; 151: 68–78.
Lu Y Z, Lu R F, Zhang Z. Detection of subsurface bruising in fresh pickling cucumbers using structured-illumination reflectance imaging. Postharvest Biology and Technology, 2021; 180: 111624.
Li J B, Lu Y Z, Lu R F. Detection of early decay in navel oranges by structured-illumination reflectance imaging combined with image enhancement and segmentation. Postharvest Biology and Technology, 2023; 196: 112162.
Barmore C R, Brown G E. Polygalacturonase from citrus fruit infected with Penicillium italicum. Phytopathology, 1981; 71: 328–331
Baranowski P, Mazurek W, Pastuszka-Wozniak J. Supervised classification of bruised apples with respect to the time after bruising on the basis of hyperspectral imaging data. Postharvest Biology and Technology, 2013; 86: 249–258.
Sun Y, Yuan M, Liu X Y, Su M, Wang L L, Zeng Y Z, et al. A sample selection method specific to unknown test samples for calibration and validation sets based on spectra similarity. Spectrochim Acta A: Molecular and Biomolecular Spectroscopy, 2021; 258: 119870.
Lu Y Z, Lu R F. Structured-illumination reflectance imaging for the detection of defects in fruit: Analysis of resolution, contrast and depth-resolving features. Biosystems Engineering, 2019; 180: 1–15.
Li J B, Lu Y Z, Lu R F. Identification of early decayed oranges using structured-illumination reflectance imaging coupled with fast demodulation and improved image processing algorithms. Postharvest Biology and Technology, 2024; 207: 112627.
Larkin K G, Bone D J, Oldfield M A. Natural demodulation of two-dimensional fringe patterns. I. General background of the spiral phase quadrature transform. Journal of the Optical Society of America A, 2001; 18(8): 1862–1870.
Lu Y Z, Li R, Lu R F. Fast demodulation of pattern images by spiral phase transform in structured-illumination reflectance imaging for detection of bruises in apples. Computers and Electronics in Agriculture, 2016; 127: 652–658.
Haralick R M, Shanmugam K, Dinstein I. Textural features for image classification. IEEE Transactions on Systems, Man, and Cybernetics, 1973; SMC-3(6): 610–621.
Hu J, Li D L, Duan Q L, Han, Y Q, Chen G F, Si X L. Fish species classification by color, texture and multi-class support vector machine using computer vision. Computers and Electronics in Agriculture, 2012; 88: 133–140.
Li H D, Xu Q S, Liang Y Z. Random frog: An efficient eversible jump Markov chain Monte Carlo-like approach for variable selection with applications to gene selection and disease classification. Analytica Chimica Acta, 2012; 740: 20–26.
Wold S, Sjöström M, Eriksson L. PLS-regression: A basic tool of chemometrics. Chemometrics and Intelligent Laboratory Systems, 2001; 58(2): 109–130.
Zhang Y F, Wang Z L, Tian X, Yang X H, Cai Z L, Li J B. Online analysis of watercore apples by considering different speeds and orientations based on Vis/NIR full-transmittance spectroscopy. Infrared Physics & Technology, 2022; 122: 104090.
Li J B, Zhang R Y, Li J B, Wang Z L, Zhang H L, Zhan B S, et al. Detection of early decayed oranges based on multispectral principal component image combining both bi-dimensional empirical mode decomposition and watershed segmentation method. Postharvest Biology and Technology, 2019; 158: 110986.
Copyright (c) 2024 International Journal of Agricultural and Biological Engineering
This work is licensed under a Creative Commons Attribution 4.0 International License.