Yıl: 2021 Cilt: 13 Sayı: 1 Sayfa Aralığı: 192 - 203 Metin Dili: İngilizce DOI: 10.47000/tjmcs.897631 İndeks Tarihi: 29-07-2022

A Deep Learning-Based Seed Classification with Mobile Application

Öz:
Seed quality is an essential factor in agricultural production. Some seeds are inherently small so it is difficult to identify and classify differences between species. In the traditional method, these differences are classified by experts considering the morphological structure, texture and color. This method involves a classification process that is costly, subjective and time confusing, what makes it necessary to develop a process that can automatically detect the type of seeds. In this study, a mobile application has been developed that quickly detects and classifies seed images with high accuracy using CNN, one of the deep learning techniques.
Anahtar Kelime: mobile application Deep learning convolutional neural networks seed classification

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA BAŞOL Y, TOKLU S (2021). A Deep Learning-Based Seed Classification with Mobile Application. , 192 - 203. 10.47000/tjmcs.897631
Chicago BAŞOL YUSUF,TOKLU Sinan A Deep Learning-Based Seed Classification with Mobile Application. (2021): 192 - 203. 10.47000/tjmcs.897631
MLA BAŞOL YUSUF,TOKLU Sinan A Deep Learning-Based Seed Classification with Mobile Application. , 2021, ss.192 - 203. 10.47000/tjmcs.897631
AMA BAŞOL Y,TOKLU S A Deep Learning-Based Seed Classification with Mobile Application. . 2021; 192 - 203. 10.47000/tjmcs.897631
Vancouver BAŞOL Y,TOKLU S A Deep Learning-Based Seed Classification with Mobile Application. . 2021; 192 - 203. 10.47000/tjmcs.897631
IEEE BAŞOL Y,TOKLU S "A Deep Learning-Based Seed Classification with Mobile Application." , ss.192 - 203, 2021. 10.47000/tjmcs.897631
ISNAD BAŞOL, YUSUF - TOKLU, Sinan. "A Deep Learning-Based Seed Classification with Mobile Application". (2021), 192-203. https://doi.org/10.47000/tjmcs.897631
APA BAŞOL Y, TOKLU S (2021). A Deep Learning-Based Seed Classification with Mobile Application. Turkish Journal of Mathematics and Computer Science, 13(1), 192 - 203. 10.47000/tjmcs.897631
Chicago BAŞOL YUSUF,TOKLU Sinan A Deep Learning-Based Seed Classification with Mobile Application. Turkish Journal of Mathematics and Computer Science 13, no.1 (2021): 192 - 203. 10.47000/tjmcs.897631
MLA BAŞOL YUSUF,TOKLU Sinan A Deep Learning-Based Seed Classification with Mobile Application. Turkish Journal of Mathematics and Computer Science, vol.13, no.1, 2021, ss.192 - 203. 10.47000/tjmcs.897631
AMA BAŞOL Y,TOKLU S A Deep Learning-Based Seed Classification with Mobile Application. Turkish Journal of Mathematics and Computer Science. 2021; 13(1): 192 - 203. 10.47000/tjmcs.897631
Vancouver BAŞOL Y,TOKLU S A Deep Learning-Based Seed Classification with Mobile Application. Turkish Journal of Mathematics and Computer Science. 2021; 13(1): 192 - 203. 10.47000/tjmcs.897631
IEEE BAŞOL Y,TOKLU S "A Deep Learning-Based Seed Classification with Mobile Application." Turkish Journal of Mathematics and Computer Science, 13, ss.192 - 203, 2021. 10.47000/tjmcs.897631
ISNAD BAŞOL, YUSUF - TOKLU, Sinan. "A Deep Learning-Based Seed Classification with Mobile Application". Turkish Journal of Mathematics and Computer Science 13/1 (2021), 192-203. https://doi.org/10.47000/tjmcs.897631