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Rice_Identification

About Dataset

Feature extraction processes were performed based on the image processing techniques using morphological, shape and color features for five different rice varieties of the same brand. A total of 75 thousand pieces of rice grain were obtained, including 15 thousand pieces of each variety of rice. Pre-processing operations were applied to the images and made available for feature extraction. A total of 106 features were inferred from the images; 12 morphological features and 4 shape features obtained using morphological features and 90 color features obtained from five different color spaces (RGB, HSV, Lab*, YCbCr, XYZ). In addition, for the 106 features obtained, features were selected by ANOVA, X2 and Gain Ratio tests and useful features were determined. In all tests, out of 106 features, the 5 most effective and specific features were obtained roundness, compactness, shape factor 3, aspect ratio and eccentricity. The color features were listed in different order following these features.

About Algorithms

Used Decision Tree Classifier,Light GBM,K-Means For Classification of Rice Types.

About

A total of 75 thousand rice grains were collected, including 15 thousand pieces of each type of rice. The photos were pre-processed before being made accessible for feature extraction. The photos yielded a total of 106 features. Various Classification Algorithms are used to classify rice varieties.

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