Statistical features analysis and discrimination of maize seeds utilizing machine vision approach

Author:

Ali Aqib1,Mashwani Wali Khan2,Tahir Muhammad H.3,Belhaouari Samir Brahim4,Alrabaiah Hussam5,Naeem Samreen1,Nasir Jamal Abdul6,Jamal Farrukh7,Chesneau Christophe8

Affiliation:

1. Department of Computer Science & IT, Glim Institute of Modern Studies, Bahawalpur, Pakistan

2. Institute of Numerical Sciences, Kohat University of Sciences & Technology, Kohat, Pakistan

3. Department of Statistics, The Islamia University of Bahawalpur, Bahawalpur, Pakistan

4. Division of Information and Computing Technology, College of Science and Engineering, Hamad Bin Khalifa University, Education City, Qatar Foundation, Doha, Qatar

5. College of Engineering al Ain University, al Ain, UAE & Department of Mathematics, Tafila Technical University Tafila, Jordan

6. Department of Statistics, GC University Lahore, Pakistan

7. Department of Statistics, The Islamia University of Bahawalpur, Pakistan

8. Department of Mathematics, Université de Caen, LMNO, Campus II, Science 3, Caen, France

Abstract

The purpose of this study is the statistical analysis and discrimination of maize seed using a machine vision (MV) approach. The foundation of the digital image dataset holds six maize seed varieties named as Kargal K-9803, Gujjar Khan, Desi White, Pioner 30Y87, Syngenta ST-6142, and Pioner 31R88. The digital image dataset acquired via a digital imaging laboratory. For preprocessing, we crop the image into a size of 600×600 pixels, and convert it into a gray level image format. After that, line and edge detection are performed by using a Prewitt filter, and five non-overlapping areas of interest (AOIs) size of (200×200), and (250×250) are drawn. A total of 56 statistical features, containing texture features, histogram features, and spectral features, is extracted from each AOI. The 11 optimized statistical features have been selected by deploying “Correlation-based Feature Selection” (CFS) with the Greedy algorithm. For the discrimination analysis, four MV classifiers named as “Support Vector Machine” (SVM), “Logistic” (Lg), “Bagging” (B), and “LogitBoost” (LB) have been deployed on optimized statistical features dataset. After analysis, the SVM classifier has shown a promising accuracy of 99.93% on AOIs size (250×250). The obtained accuracy by SVM classifier on six maize seed varieties, namely Kargal K-9803, Gujjar Khan, Desi White, Pioner 30Y87, Syngenta ST-6142, and Pioner 31R88, were 99.9%, 99.8%, 100%, 100%, 99.9%, and 99.8%, respectively.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference23 articles.

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3. Plant remains and associated insects from the Millipede site (13ML361), a burned earthlodge in southwest Iowa;Green;Plains Anthropologist,2020

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