Classification of canola seed varieties based on multi-feature analysis using computer vision approach

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Abstract

This study aims to analyze the potential of the computer vision (CV) approach to classify eight canola varieties. The input images of eight canola varieties were CON-I, CON-II, CON-III, Pakola, Canola Raya, Rainbow, PARC Canola Hybrid, and Tarnab-III. A digital camera acquired these images on an open sunny day without any complex laboratory setup. First-order histogram features, second-order statistical texture features, binary features, spectral features of three bands were, blue (B), green (G), and red (R), were employed in the artificial neural network (ANN). A 10-fold stratified cross-validation method was used for classification. The best results with accuracy ranging from 95% to 98% observed when the data of regions of interest (512 × 512) deployed to the classifier.

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Qadri, S., Furqan Qadri, S., Razzaq, A., Ul Rehman, M., Ahmad, N., Nawaz, S. A., … Khan, D. M. (2021). Classification of canola seed varieties based on multi-feature analysis using computer vision approach. International Journal of Food Properties, 24(1), 493–504. https://doi.org/10.1080/10942912.2021.1900235

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