Author
Listed:
- Abdul Razzaq
- Sharaiz Shahid
- Muhammad Akram
- Muhammad Ashraf
- Shahid Iqbal
- Aamir Hussain
- M. Azam Zia
- Sulman Qadri
- Najia Saher
- Faisal Shahzad
- Ali Nawaz Shah
- Aziz-ur Rehman
- Sven-Erik Jacobsen
- Atif Khan
Abstract
Stomata are the main medium of plants for the trade of water, regulate the gas exchange, and are responsible for the process of photosynthesis and transpiration. The stomata are surrounded by guard cells, which help to control the rate of transpiration by opening and closing the stomata. The stomata states (open and close) play a significant role in describing the plant’s health. Moreover, stomata counting is important for scientists to investigate the numbers of stomata that are open and those that are closed to measure their density and distribution on the surface of leaves through different sampling techniques. Although a few techniques for stomata counting have been proposed, these approaches do not identify and classify the stomata based on their states in leaves. In this research, we have developed an automatic system for stomata state identification and counting in quinoa leaf images through the transformed learning (neural network model Single Shot Detector) approach. In leaf imprint, the state of stomata has been determined by measuring the correlation between the area of stomata and the aperture of each detected stoma in the image. The stomata states have been classified through the Support Vector Machine (SVM) algorithm. The overall identification and classification accuracy of the proposed system are 98.6% and 97%, respectively, helping researchers to obtain accurate stomatal state information for leaves in an efficient and simple way.
Suggested Citation
Abdul Razzaq & Sharaiz Shahid & Muhammad Akram & Muhammad Ashraf & Shahid Iqbal & Aamir Hussain & M. Azam Zia & Sulman Qadri & Najia Saher & Faisal Shahzad & Ali Nawaz Shah & Aziz-ur Rehman & Sven-Eri, 2021.
"Stomatal State Identification and Classification in Quinoa Microscopic Imprints through Deep Learning,"
Complexity, Hindawi, vol. 2021, pages 1-9, July.
Handle:
RePEc:hin:complx:9938013
DOI: 10.1155/2021/9938013
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