Araştırma Makalesi
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Sentinel-2A MSI Verisinin Makine Öğrenmesi Tabanlı Destek Vektör Makinesi, Rastgele Orman ve En Büyük Olasılık Algoritmalarını Kullanarak Piksel Tabanlı Kontrollü Sınıflandırılmadaki Etkilerinin Araştırılması

Yıl 2024, , 138 - 157, 26.09.2024
https://doi.org/10.48123/rsgis.1410250

Öz

Bu araştırma makalesinde, Sinop havzasına yönelik 03.05.2023 tarihli Sentinel-2A MSI verisinin destek vektör makinesi (DVM), rastgele orman (RO) ve en büyük olasılık (EBO) algoritmalarını kullanarak piksel tabanlı kontrollü sınıflandırılması ve daha sonra her bir sınıflandırma algoritmasına ait genel doğruluk değerlerinin belirlenmesi ile her bir arazi kullanımı/arazi örtüsü sınıfı için üretici doğruluğu, kullanıcı doğruluğu, doğruluk, kesinlik, hassasiyet, F1-skoru ve ROC-AUC (İşlem Karakteristik Eğrisi-Eğri Altında Kalan Alan) metriklerine ait değerlerin kıyaslanması amaçlanmıştır. Elde edilen sonuçlar DVM ve RO algoritmalarının EBO yöntemine göre daha yüksek ve benzer genel doğruluk değerleri verdiğini göstermiştir (0.88). Her bir sınıflandırma algoritması için su kütleleri ve mera sınıflarının en yüksek doğruluk, kesinlik, hassasiyet ve F1-skoru değerlerine sahip olduğu gözlemlenmiştir. Ancak düşük AUC değerleri, eğitim setinin oluşturulduğu aşamada bazı arazi kullanımı/arazi örtüsü sınıfları için çok sayıda piksel toplanırken bazı sınıfların ise daha az piksel kullanılarak temsil edilmesi ya da yüksek doğruluk değerlerine rağmen düşük hassasiyet ve kesinlik değerlerinin varlığı gibi durumlar veri setlerindeki dengesizliği ortaya koymuştur.

Kaynakça

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Investigation of the Effects of Machine Learning-Based Support Vector Machine, Random Forest and Maximum Likelihood Algorithms on Pixel-Based Supervised Classification of Sentinel-2A MSI Data

Yıl 2024, , 138 - 157, 26.09.2024
https://doi.org/10.48123/rsgis.1410250

Öz

In this research paper, we aimed to compare different machine learning algorithms such as Support Vector Machine (SVM), Random Forest (RF), and Maximum Likelihood for pixel-based supervised classification of Sentinel-2A MSI data from the Sinop basin on May 3, 2023. We evaluated the overall accuracy values and compared various metrics (producer accuracy, user accuracy, accuracy, precision, sensitivity, F1-score, and ROC-AUC (Receiver Operating Characteristic-Area Under Curve) for each land use/land cover class. The results showed that the SVM and RF algorithms gave higher and similar overall accuracy values than the Maximum Likelihood method (0.88). For each classification algorithm, water and pasture classes had the highest accuracy, precision, sensitivity and F1-score values. However, low AUC values, the fact that many pixels were collected for some land use/land cover classes while others were represented by fewer pixels at the stage of training set creation, or the presence of low precision and accuracy values despite high accuracy values revealed the imbalance in the datasets.

Kaynakça

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  • Akar, Ö., & Güngör, O. (2012). Classification of multispectral images using Random Forest algorithm. Journal of Geodesy and Geoinformation, 1(2), 105-112.
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Toplam 95 adet kaynakça vardır.

Ayrıntılar

Birincil Dil Türkçe
Konular Coğrafi Bilgi Sistemleri ve Mekansal Veri Modelleme, Fotogrametri ve Uzaktan Algılama
Bölüm Araştırma Makaleleri
Yazarlar

Nursaç Serda Kaya 0000-0001-9814-5651

Orhan Dengiz 0000-0002-0458-6016

Erken Görünüm Tarihi 24 Eylül 2024
Yayımlanma Tarihi 26 Eylül 2024
Gönderilme Tarihi 26 Aralık 2023
Kabul Tarihi 2 Haziran 2024
Yayımlandığı Sayı Yıl 2024

Kaynak Göster

APA Kaya, N. S., & Dengiz, O. (2024). Sentinel-2A MSI Verisinin Makine Öğrenmesi Tabanlı Destek Vektör Makinesi, Rastgele Orman ve En Büyük Olasılık Algoritmalarını Kullanarak Piksel Tabanlı Kontrollü Sınıflandırılmadaki Etkilerinin Araştırılması. Türk Uzaktan Algılama Ve CBS Dergisi, 5(2), 138-157. https://doi.org/10.48123/rsgis.1410250

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