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research-article

A novel feature extraction method for identifying quality seed selection

Published: 01 January 2022 Publication History

Abstract

Nowadays, research works in the agriculture field have been widely incorporated and showing promising growth. Digital image mining techniques were used in this paper to test different seeds. Analysis of physical purity tells us the proportion of pure seed in many seeds. The software that allows seed images to be predicted on seed lots is developed with digital image mining techniques. As seeds are the main part of any cultivation, healthy seeds yield healthy crops. So, it becomes necessary to provide the farmers with healthy seeds. The seed disease, which is only classified into healthy and unhealthy seeds, is difficult for most farmers to describe. The seed's spatial, colour, texture, shape and statistical properties are connected to feature extraction. In order to get the best results, this study utilises a brand-new feature extraction technique for classifying high-quality seeds. It was concluded that Bresenham's Line Technique plus a few textural qualities might be utilised to compare the digital differential analyser (DDA) line drawing algorithm and determine the seed type.

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          Published In

          cover image International Journal of Intelligent Engineering Informatics
          International Journal of Intelligent Engineering Informatics  Volume 10, Issue 5
          2022
          79 pages
          ISSN:1758-8715
          EISSN:1758-8723
          DOI:10.1504/ijiei.2022.10.issue-5
          Issue’s Table of Contents

          Publisher

          Inderscience Publishers

          Geneva 15, Switzerland

          Publication History

          Published: 01 January 2022

          Author Tags

          1. image mining
          2. feature extraction
          3. seeds
          4. MSE
          5. mean square error Bresenham's line algorithm
          6. SSIM
          7. structural similarity index metric
          8. DDA
          9. digital differential analyser
          10. PSNR
          11. peak signal to noise ratio

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