Sparse Structured Principal Component Analysis and Model Learning for Classification and Quality Detection of Rice Grains

Publish Year: 1399
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:

JR_JADM-8-2_002

تاریخ نمایه سازی: 1 مرداد 1399

Abstract:

In scientific and commercial fields associated with modern agriculture, the categorization of different rice types and determination of its quality is very important. Various image processing algorithms are applied in recent years to detect different agricultural products. The problem of rice classification and quality detection in this paper is presented based on model learning concepts including sparse representation and dictionary learning techniques to yield over-complete models in this processing field. There are color-based, statistical-based and texture-based features to represent the structural content of rice varieties. To achieve the desired results, different features from recorded images are extracted and used to learn the representative models of rice samples. Also, sparse principal component analysis and sparse structured principal component analysis is employed to reduce the dimension of classification problem and lead to an accurate detector with less computational time. The results of the proposed classifier based on the learned models are compared with the results obtained from neural network and support vector machine. Simulation results, along with a meaningful statistical test, show that the proposed algorithm based on the learned dictionaries derived from the combinational features can detect the type of rice grain and determine its quality precisely.

Keywords:

Rice classification , Quality detection , Sparse structured principal component analysis , Model learning , Statistical test

Authors

S. Mavaddati

Electronic Department, Faculty of Technology and Engineering, University of Mazandaran, Babolsar, Iran.