2023
DOI: 10.35335/cit.vol15.2023.386.pp48-57
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Compares the effectiveness of the bagging method in classifying spices using the histogram of oriented gradient feature extraction technique

Abstract: Spice classification is a crucial task in the food industry to ensure food safety and quality. This study focuses on the classification of spices using the Histogram of Oriented Gradient (HoG) feature extraction method and bagging method. The objective of this research is to compare the performance of three different models of bagging method, including Bootstrap Aggregating (Bagging), Random Forests, and Extra Tree Classifier, in classifying spices. The evaluation metrics used in this research are Precision, R… Show more

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Cited by 5 publications
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“…Ada beberapa metrik evaluasi yang dapat digunakan untuk mengevaluasi kinerja model Yolov7 untuk pendeteksian bangunan atap. Metrik yang paling umum digunakan adalah presisi, daya ingat, dan skor F1 [30].…”
Section: Pengujian Dan Evaluasi Hasilunclassified
“…Ada beberapa metrik evaluasi yang dapat digunakan untuk mengevaluasi kinerja model Yolov7 untuk pendeteksian bangunan atap. Metrik yang paling umum digunakan adalah presisi, daya ingat, dan skor F1 [30].…”
Section: Pengujian Dan Evaluasi Hasilunclassified