A novel hyperspectral-based approach for identification of maize kernels infected with diverse Aspergillus flavus fungi

Near infrared hyperspectral imaging over the spectral range of 900–2500 nm was investigated for its potential to identify maize kernels inoculated with aflatoxigenic fungus (AF13) from healthy kernels and kernels inoculated with non-aflatoxigenic fungus (AF36). A total of 900 kernels were used with...

Full description

Saved in:
Bibliographic Details
Published inBiosystems engineering Vol. 200; pp. 415 - 430
Main Authors Tao, Feifei, Yao, Haibo, Hruska, Zuzana, Kincaid, Russell, Rajasekaran, Kanniah, Bhatnagar, Deepak
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.12.2020
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:Near infrared hyperspectral imaging over the spectral range of 900–2500 nm was investigated for its potential to identify maize kernels inoculated with aflatoxigenic fungus (AF13) from healthy kernels and kernels inoculated with non-aflatoxigenic fungus (AF36). A total of 900 kernels were used with 3 treatments, namely, each 300 kernels inoculated with AF13, AF36 and sterile distilled water as control, separately. One hundred kernels from each treatment of 300 kernels were incubated for 3, 5 and 8 days, to obtain diverse samples. Based on the full mean spectra extracted from the same kernel side(s), the best mean overall prediction accuracies achieved were 96.3% for the 3-class (control, non-aflatoxigenic and aflatoxigenic) classification and 97.8% for the 2-class (aflatoxigenic-negative and -positive) classification using the partial least-squares discriminant analysis (PLS-DA) method. The 3-class and 2-class models using the full mean spectra extracted from different kernel sides had the best mean overall prediction accuracies of 91.5% and 95.1%. Using the most important 30, 55 and 100 variables determined by the random frog (RF) algorithm, the simplified type I-RF-PLSDA models achieved the mean overall prediction accuracies of 87.7%, 93.8% and 95.2% for the 2-class discrimination using different kernel sides’ information. Among the most important 55 and 100 variables, a total of 25 and 67 variables were consistently selected in the 100 random runs and were therefore used further for establishing the type II-RF-PLSDA models. Using these 25 and 67 variables, the type II-RF-PLSDA models obtained the mean overall prediction accuracies of 82.3% and 94.9% separately. •NIR hyperspectral imaging to detect aflatoxigenic fungal infection on maize kernels.•Effect of maize kernel side on discrimination results was addressed.•Random frog algorithm was employed to optimise the discriminant analysis.•Both 3-class and 2-class models were established using different types of spectra.•Visualisation of predicted kernel class was proposed and demonstrated.
ISSN:1537-5110
1537-5129
DOI:10.1016/j.biosystemseng.2020.10.017