Yıl: 2020 Cilt: 3 Sayı: 3 Sayfa Aralığı: 158 - 168 Metin Dili: İngilizce DOI: 10.35377/saucis.03.03.755269 İndeks Tarihi: 15-05-2021

Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector

Öz:
Among the artificial intelligence based studies conducted in the field of agriculture, diseaserecognition methods founded on deep learning are observed to become widespread. Due to thediversity and regional specificity of many plant species, studies performed in this field are not at thedesired level. Olive peacock spot disease of the olive plant which grows only in certain regions in theworld is a widely encountered disease particularly in Turkey. The aim of this research is to develop anolive peacock spot disease detection system using a Single Shot Detector (SSD) which is one thepopular deep learning architectures to support olive farmers. This study presents a data set consistingof 1460 olive leaves samples for the detection of olive peacock spot disease. All of the images of theolive leaves which produced under controlled conditions were collected from Aegean region ofTurkey during spring and summer. The data set was trained with different intersection over union(IoU) threshold values using SSD architecture. A 96% average precision (AP) value was obtained withIoU=0.5. As IOU value goes up from 0.5, erroneously classified olive peacock spot disease symptomsgrowed larger as well. The AP curve becomes flat when between 0.1 and 0.5, and it decreases whengreater than 0.5. This analysis showed that the IoU significantly influenced the performance of SSDbased model in detection of olive peacock spot disease. In addition to, trainings were performed byemploying Pytorch library and a GUI was developed for the SSD based application using PyQt5which is one of Pyhton's libraries. Results showed that the SSD was a robust tool for recognizing theolive peacock spot disease.
Anahtar Kelime:

Single Shot Detector Kullanarak Otomatik Zeytin Halkalı Leke Hastalığı Tanıma Sistemi Geliştirilmesi

Öz:
Tarım alanında gerçekleştirilen yapay zekâ temelli çalışmalar arasında, derin öğrenmeye dayanan hastalık tespiti uygulamalarının giderek yaygınlaştığı görülmektedir. Bitki türleri arasındaki çeşitlilik ve çoğu bitki türünün belirli coğrafyalarda yetişmesi bu alanda gerçekleştirilen çalışmaların sayısının istenen düzeyde olmadığını göstermektedir. Dünyada sadece belirli bölgelerde yetişen zeytin bitkisine ait halkalı leke hastalığı özellikle Türkiye’de yaygın olarak görülmektedir. Bu çalışmanın amacı, zeytin çiftçilerini desteklemek için popüler derin öğrenme mimarilerinden birisi olan Single Shot Detector (SSD) kullanarak zeytin halkalı leke hastalığını tespit sistemi geliştirmektir. Bu çalışmada zeytin halkalı leke hastalığının tespiti için 1460 adet zeytin yaprağı örneğini içeren veri seti oluşturulmuştur. Kontrollü koşullar altında üretilen tüm zeytin yaprak görüntüleri ilkbahar ve yaz dönemlerinde Türkiye’nin Ege bölgesinden toplanmıştır. Veri seti, SSD mimarisi üzerinde farklı IoU treshold değerleri ile eğitilmiştir. IoU=0.5 için %96 düzeyinde Average Precision (AP) değeri elde edilmiştir. IOU değeri 0.5’den yukarı doğru gittikçe, düşüş hatalı olarak sınıflandırılan olive peacock spot semptomu sayısının arttığı görülmüştür. AP eğrisi 0.1 ile 0.5 arasındayken düz hale gelir ve 0.5’den büyük olduğunda azalır. Bu analiz IoU’nun zeytin halkalı leke hastalığının tespitinde SSDtemelli modelin performansını önemli şekilde etkilediğini göstermektedir. Ayrıca eğitimler Pytorch kütüphanesi kullanılarak gerçekleştirildi ve Python kütüphanelerinden biri olan PyQt5 kullanılarak SSD tabanlı uygulama için bir GUI geliştirildi. Sonuçlar, SSD’nin olive peacock spot hastalığının tanınması için güçlü bir araç olduğunu göstermiştir.
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA UĞUZ S (2020). Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. , 158 - 168. 10.35377/saucis.03.03.755269
Chicago UĞUZ Sinan Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. (2020): 158 - 168. 10.35377/saucis.03.03.755269
MLA UĞUZ Sinan Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. , 2020, ss.158 - 168. 10.35377/saucis.03.03.755269
AMA UĞUZ S Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. . 2020; 158 - 168. 10.35377/saucis.03.03.755269
Vancouver UĞUZ S Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. . 2020; 158 - 168. 10.35377/saucis.03.03.755269
IEEE UĞUZ S "Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector." , ss.158 - 168, 2020. 10.35377/saucis.03.03.755269
ISNAD UĞUZ, Sinan. "Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector". (2020), 158-168. https://doi.org/10.35377/saucis.03.03.755269
APA UĞUZ S (2020). Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. Sakarya University Journal of Computer and Information Sciences (Online), 3(3), 158 - 168. 10.35377/saucis.03.03.755269
Chicago UĞUZ Sinan Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. Sakarya University Journal of Computer and Information Sciences (Online) 3, no.3 (2020): 158 - 168. 10.35377/saucis.03.03.755269
MLA UĞUZ Sinan Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. Sakarya University Journal of Computer and Information Sciences (Online), vol.3, no.3, 2020, ss.158 - 168. 10.35377/saucis.03.03.755269
AMA UĞUZ S Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. Sakarya University Journal of Computer and Information Sciences (Online). 2020; 3(3): 158 - 168. 10.35377/saucis.03.03.755269
Vancouver UĞUZ S Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector. Sakarya University Journal of Computer and Information Sciences (Online). 2020; 3(3): 158 - 168. 10.35377/saucis.03.03.755269
IEEE UĞUZ S "Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector." Sakarya University Journal of Computer and Information Sciences (Online), 3, ss.158 - 168, 2020. 10.35377/saucis.03.03.755269
ISNAD UĞUZ, Sinan. "Automatic Olive Peacock Spot Disease Recognition System Development by Using Single Shot Detector". Sakarya University Journal of Computer and Information Sciences (Online) 3/3 (2020), 158-168. https://doi.org/10.35377/saucis.03.03.755269