TY - JOUR
T1 - Detection of foreign materials in cocoa beans by hyperspectral imaging technology
AU - Saeidan, Ali
AU - Khojastehpour, Mehdi
AU - Golzarian, Mahmood Reza
AU - Mooenfard, Marziye
AU - Khan, Haris Ahmad
PY - 2021/11
Y1 - 2021/11
N2 - The presence of foreign materials in a batch of cocoa beans affect its profitability, marketability and overall quality grade of the product. Therefore, the identification of these materials and their subsequent removal is very important to ensure the high quality of the final product. This study aims to investigate the feasibility of using hyperspectral imaging technology for the detection and discrimination of four categories of foreign materials (wood, plastic, stone and plant organs) that are relevant to the cocoa processing industries. The spectral image data of 250 cocoa beans and foreign material was analyzed using principal component analysis and three classification models Support Vector Machine (SVM) Linear Discriminant Analyses (LDA) and K Nearest Neighbours (KNN). Optimal wavebands, which were obtained from the second spectra graph and the first three PCs, were fed into the classification models and the performance of classifiers was compared. The results showed that SVM could reach over 89.10% accuracy in classifying cocoa beans and foreign materials. The accuracy of the SVM classifier when using optimal features as input was 86.90% for the training set and 81.28% for the test set. An external test set of data was used to test the generalization of the model. The results showed that the classification of foreign materials could be more robust when the optimal feature was used as input data.
AB - The presence of foreign materials in a batch of cocoa beans affect its profitability, marketability and overall quality grade of the product. Therefore, the identification of these materials and their subsequent removal is very important to ensure the high quality of the final product. This study aims to investigate the feasibility of using hyperspectral imaging technology for the detection and discrimination of four categories of foreign materials (wood, plastic, stone and plant organs) that are relevant to the cocoa processing industries. The spectral image data of 250 cocoa beans and foreign material was analyzed using principal component analysis and three classification models Support Vector Machine (SVM) Linear Discriminant Analyses (LDA) and K Nearest Neighbours (KNN). Optimal wavebands, which were obtained from the second spectra graph and the first three PCs, were fed into the classification models and the performance of classifiers was compared. The results showed that SVM could reach over 89.10% accuracy in classifying cocoa beans and foreign materials. The accuracy of the SVM classifier when using optimal features as input was 86.90% for the training set and 81.28% for the test set. An external test set of data was used to test the generalization of the model. The results showed that the classification of foreign materials could be more robust when the optimal feature was used as input data.
KW - Cocoa beans
KW - Foreign materials
KW - Hyperspectral imaging
KW - Near-infrared spectroscopy
U2 - 10.1016/j.foodcont.2021.108242
DO - 10.1016/j.foodcont.2021.108242
M3 - Article
AN - SCOPUS:85107070875
SN - 0956-7135
VL - 129
JO - Food Control
JF - Food Control
M1 - 108242
ER -