About Dataset
Data Set Name: Rice Dataset (Commeo and Osmancik)
Abstract: A total of 3810 rice grain's images were taken for the two species (Cammeo and Osmancik), processed and feature inferences were made. 7 morphological features were obtained for each grain of rice.
Source:
Ilkay CINAR
Graduate School of Natural and Applied Sciences,
Selcuk University, Konya, TURKEY
ilkay_cinar@hotmail.com
Murat KOKLU
Faculty of Technology,
Selcuk University, Konya, TURKEY.
mkoklu@selcuk.edu.tr
DATASET: https://www.muratkoklu.com/datasets/
Relevant Information: In order to classify the rice varieties (Cammeo and Osmancik) used, preliminary processing was applied to the pictures obtained with computer vision system and a total of 3810 rice grains were obtained. Furthermore, 7 morphological features have been inferred for each grain. A data set has been created for the properties obtained.
Attribute Information:
- Area: Returns the number of pixels within the boundaries of the rice grain.
- Perimeter: Calculates the circumference by calculating the distance between pixels around the boundaries of the rice grain.
- Major Axis Length: The longest line that can be drawn on the rice grain, i.e. the main axis distance, gives.
- Minor Axis Length: The shortest line that can be drawn on the rice grain, i.e. the small axis distance, gives.
- Eccentricity: It measures how round the ellipse, which has the same moments as the rice grain, is.
- Convex Area: Returns the pixel count of the smallest convex shell of the region formed by the rice grain.
- Extent: Returns the ratio of the region formed by the rice grain to the bounding box pixels
- Class: Commeo and Osmancik.
Relevant Papers / Citation Requests / Acknowledgements:
Cinar, I. and Koklu, M. (2019). Classification of Rice Varieties Using Artificial Intelligence Methods. International Journal of Intelligent Systems and Applications in Engineering, vol.7, no.3 (Sep. 2019), pp.188-194. https://doi.org/10.18201/ijisae.2019355381.
** CINAR, I. and KOKLU, M., (2019). “Classification of Rice Varieties Using Artificial Intelligence Methods.” International Journal of Intelligent Systems and Applications in Engineering, 7(3), 188-194. UCI Machine Learning Repository: https://archive.ics.uci.edu/ml/datasets/Rice+%28Cammeo+and+Osmancik%29
DOI: https://doi.org/10.18201/ijisae.2019355381