2022
DOI: 10.3390/s22145333
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A Method for Detection of Corn Kernel Mildew Based on Co-Clustering Algorithm with Hyperspectral Image Technology

Abstract: Hyperspectral imaging can simultaneously acquire spectral and spatial information of the samples and is, therefore, widely applied in the non-destructive detection of grain quality. Supervised learning is the mainstream method of hyperspectral imaging for pixel-level detection of mildew in corn kernels, which requires a large number of training samples to establish the prediction or classification models. This paper presents an unsupervised redundant co-clustering algorithm (FCM-SC) based on multi-center fuzzy… Show more

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Cited by 7 publications
(1 citation statement)
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“…Hyperspectral imaging was used to rapidly analyze the moisture content of corn kernels with a predicted correlation coefficient (r) of 0.9064 [13]. An unsupervised redundant co-clustering algorithm (FCM-SC) based on multicenter fuzzy c-mean (FCM) clustering and spectral clustering (SC) was proposed by Kang et al This algorithm was capable of describing the complex structure of corn kernel mold distribution and exhibited higher stability, antiinterference, generalization, and accuracy than supervised classification models [14].…”
Section: Introductionmentioning
confidence: 99%
“…Hyperspectral imaging was used to rapidly analyze the moisture content of corn kernels with a predicted correlation coefficient (r) of 0.9064 [13]. An unsupervised redundant co-clustering algorithm (FCM-SC) based on multicenter fuzzy c-mean (FCM) clustering and spectral clustering (SC) was proposed by Kang et al This algorithm was capable of describing the complex structure of corn kernel mold distribution and exhibited higher stability, antiinterference, generalization, and accuracy than supervised classification models [14].…”
Section: Introductionmentioning
confidence: 99%