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Asian Journal of Information Technology

ISSN: Online 1993-5994
ISSN: Print 1682-3915
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Analysis of DWT-GLCM-Tamura and Angle Features for Variety Identification of Seeds

Archana Chaugule and S.N. Mali
Page: 3238-3246 | Received 21 Sep 2022, Published online: 21 Sep 2022

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Abstract

This research proposes an algorithm to implement feature extraction technique using discrete wavelet-GLCM-Tamura and angle and use the extracted features to represent the image for classification of seeds. A total of 69 discrete wavelet-GLCM-Tamura and 12 angle features were extracted from the high-resolution images of paddy seeds. These features were employed along with ANN to identify paddy varieties. These researches is aimed at comparing discrete wavelet-GLCM-Tamura and angle features using ANN for discriminating Indian paddy varieties and also evaluate variety-wise classification of individual grains. The classification of four paddy (rice) grains, viz. Karjat-6 (K6) and Ratnagiri-2 (R2), Ratnagiri-4 (R4) and Ratnagiri-24 (R24) was done and the features were evaluated in terms of accuracy. From the entire feature models, most suitable feature was identified for accurate classification. Angle features gave the best classification using ANN among both the feature sets.


How to cite this article:

Archana Chaugule and S.N. Mali. Analysis of DWT-GLCM-Tamura and Angle Features for Variety Identification of Seeds.
DOI: https://doi.org/10.36478/ajit.2016.3238.3246
URL: https://www.makhillpublications.co/view-article/1682-3915/ajit.2016.3238.3246