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Journal of Environmental Biology

pISSN: 0254-8704 ; eISSN: 2394-0379 ; CODEN: JEBIDP

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    Abstract - Issue Mar 2020, 41 (2)                                     Back


nstantaneous and historical temperature effects on a-pinene

Determination of olive cultivars by deep learning and ISSR markers

 ????????????????????

M. Sesli1*, E.D. Yegenoğlu2 and V. Altıntas3 ??????? 

1Manisa Celal Bayar University, School of Tobacco Expertise, Akhisar, Manisa, 45200, Turkey

2Manisa Celal Bayar University, Alasehir Vocational School, Alasehir, Manisa, 45600, Turkey

3Manisa Celal Bayar University, Akhisar Vocational School, Akhisar, Manisa, 45200, Turkey

*Corresponding Author Email : meltem.sesli@cbu.edu.tr

Paper received: 29.04.2019 ?????? ???????????????????????????????????????Revised received: 29.09.2019 ???????????? ????????????????????????????????Accepted: 14.12.2019

 

Abstract

Aim: The aim of the study was to make accurate estimation of olive varieties by using morphologic characters through deep learning and genetic characters through ISSR (Inter Simple Sequence Repeats) markers.

Methodology: In this study, 800 leaf samples were collected from olive varieties and training and testing was performed; 600 samples were assessed for the training process and 200 samples were assessed for the testing process. Convolution of neural networks is a component of deep learning which is used frequently in image processing was used in this study.

Results: Based on the results of such classification, the designed model was successful at a rate of 89.57% and it was also determined that this structure can be used in the area of problem.

Interpretation: The success of convolution neural networks in terms of classification was exhibited. In ISSR method, the evaluation was performed on the basis of DNAs, i.e., genetic properties of varieties by means of ISSR markers.

Keywords: Deep learning, ISSR markers, Neural networks, Olive cultivars

 

 

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