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Uydu tabanlı arazi kullanımının sınıflandırılması için farklı denetimli yöntemlerin karşılaştırmalı analizi: Reyhanlı örneği

Yıl 2024, Cilt: 29 Sayı: 3, 707 - 723
https://doi.org/10.37908/mkutbd.1485236

Öz

Uydu tabanlı arazi kullanımının sınıflandırılması, çevre izlemesinden afet yönetimine kadar çeşitli yeryüzü gözlem uygulamalarında hayati bir rol oynamaktadır. Bu çalışma, Türkiye’nin güneyindeki Reyhanlı ilçesinde, Landsat-9 ve Sentinel-2 uydu görüntülerine uygulanan makine öğrenimi tekniklerinin arazi örtüsü sınıflandırması için karşılaştırmalı bir analizini sunmaktadır. Rastgele Orman (RO), Destek Vektör Makinesi (DVM) ve Maksimum Olabilirlik Sınıflandırması (MOS) olmak üzere üç farklı sınıflandırma algoritması, farklı arazi örtüsü sınıflarını ayırt etme başarısı açısından değerlendirilmiştir. Çalışmada, Coğrafi Bilgi Sistemleri (CBS) yazılımı kullanılarak eşit koşullarda işlenmiş yüksek çözünürlüklü multispektral uydu görüntüleri kullanılmıştır. Görsel inceleme ve istatistiksel değerlendirme, genel doğruluk ve kappa katsayısı da dahil olmak üzere sınıflandırma performansını değerlendirmek için kullanılmıştır. Sentinel-2 ve Landsat-9 uydu görüntülerinin farklı makine öğrenmesi algortimaları ile sınıflandırılması sonucunda en yüksek genel doğruluğun (GD = 0.911, Kappa = 0.879) Sentinel-2 görüntüleri için RF algoritması ile elde edildiği tespit edilmiştir. Bulgular, uydu görüntüsü seçiminin ve algoritma optimizasyonunun doğru arazi örtüsü haritalaması için önemini vurgulamaktadır. Bu çalışma, yerel planlamacılar ve otoriteler için önemli bir bakış açısı sunmakta ve Sentinel-2 görüntüleri ile makine öğrenme tekniklerinin etkili arazi kullanımı, sınıflandırması ve izlenmesi için potansiyelini ortaya koymaktadır.

Kaynakça

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  • Adam, E., Mutanga, O., Odindi, J., & Abdel-Rahman, E.M. (2014). Land-use/cover classification in a heterogeneous coastal landscape using RapidEye imagery: Evaluating the performance of random forest and support vector machines classifiers. International Journal of Remote Sensing, 35 (10), 3440-3458. https://doi.org/10.1080/01431161.2014.903435
  • Adugna, T., Xu, W., & Fan, J. (2022). Comparison of random forest and support vector machine classifiers for regional land cover mapping using coarse resolution FY-3C images. Remote Sensing, 14 (3), 574. https://doi.org/10.3390/rs14030574
  • Ahady, A.B., & Kaplan, G. (2022). Classification comparison of Landsat-8 and Sentinel-2 data in Google Earth Engine, study case of the city of Kabul. International Journal of Engineering and Geosciences, 7 (1), 24-31. https://doi.org/10.26833/ijeg.860077
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Comparative analysis of different supervised methods for satellite-based land-use classification: A case study of Reyhanlı

Yıl 2024, Cilt: 29 Sayı: 3, 707 - 723
https://doi.org/10.37908/mkutbd.1485236

Öz

Satellite-based land-use classification plays a crucial role in various Earth observation applications, ranging from environmental monitoring to disaster management. This study presents a comparative analysis of machine learning techniques applied to land cover classification using Landsat-9 and Sentinel-2 satellite imagery in the Reyhanlı district in southern Türkiye. Three different classification algorithms, Random Forest (RF), Support Vector Machine (SVM), and Maximum Likelihood Classification (MLC), were evaluated for their ability to distinguish different land cover classes. High resolution multispectral satellite imagery processed under the same conditions using Geographic Information System (GIS) software was utilized in this study. Visual inspection and statistical evaluation, including overall accuracy and kappa coefficient, were employed to assess classification performance. The classification of Sentinel-2 and Landsat-9 satellite imagery using different machine learning algorithms resulted in the highest overall accuracy (OA = 0.911, Kappa = 0.879) for Sentinel 2 imagery with the RF algorithm. These findings highlight the importance of satellite image selection and algorithm optimization for accurate land cover mapping. This study provides valuable insights for local planners and authorities and underscores the potential of Sentinel-2 imagery combined with machine learning techniques for effective land-use classification and monitoring.

Kaynakça

  • Abdelmajeed, A.Y.A., & Juszczak, R. (2024). Challenges and limitations of remote sensing applications in Northern Peatlands: present and future prospects. Remote Sensing, 16 (3), 591. https://doi.org/10.3390/rs16030591
  • Adam, E., Mutanga, O., Odindi, J., & Abdel-Rahman, E.M. (2014). Land-use/cover classification in a heterogeneous coastal landscape using RapidEye imagery: Evaluating the performance of random forest and support vector machines classifiers. International Journal of Remote Sensing, 35 (10), 3440-3458. https://doi.org/10.1080/01431161.2014.903435
  • Adugna, T., Xu, W., & Fan, J. (2022). Comparison of random forest and support vector machine classifiers for regional land cover mapping using coarse resolution FY-3C images. Remote Sensing, 14 (3), 574. https://doi.org/10.3390/rs14030574
  • Ahady, A.B., & Kaplan, G. (2022). Classification comparison of Landsat-8 and Sentinel-2 data in Google Earth Engine, study case of the city of Kabul. International Journal of Engineering and Geosciences, 7 (1), 24-31. https://doi.org/10.26833/ijeg.860077
  • Ahmad, A., Sakidin, H., Sari, M.Y.A., Amin, A., Sufahani, S.F., & Rasib, A.W. (2021). Naïve bayes classification of high-resolution aerial imagery. International Journal of Advanced Computer Science and Applications, 12 (11). https://doi.org/10.14569/ijacsa.2021.0121120
  • Aldiansyah, S., & Saputra, R.A. (2022). Comparison of machine learning algorithms for land use and land cover analysis using Google Earth Engine (Case study: Wanggu Watershed). International Journal of Remote Sensing and Earth Sciences, 19 (2), 197-210. http://dx.doi.org/10.30536/j.ijreses.2022.v19.a3803
  • Atasoy, A., & Geçen, R. (2014). Reyhanlı İlçesi topraklarında tuzlanma problemi. Türk Coğrafya Dergisi, 62, 21-28.
  • Bilginer, Ş. (2023). Kuraklığa uyum sürecinde etkili su kullanım yöntemleri ve toprak verimliliğinin iklim-akıllı tarım uygulamaları çerçevesinde incelenmesi: Reyhanlı (Hatay) ilçesi örneği. Yüksek Lisans Tezi, İstanbul Üniversitesi, Sosyal Bilimler Enstitüsü, 104 s.
  • Bouslihim, Y., Kharrou, M.H., Miftah, A., Attou, T., Bouchaou, L., & Chehbouni, A.G. (2022). Comparing pan-sharpened Landsat-9 and Sentinel-2 for land-use classification using machine learning classifiers. Journal of Geovisualization and Spatial Analysis, 6 (35). https://doi.org/10.1007/s41651-022-00130-0
  • Breiman, L. (2001). Random forests. Machine Learning, 45, 5-32.
  • Camargo, F.F., Sano, E.E., Almeida, C.M., Mura, J.C., & Almeida, T.D. (2019). A comparative assessment of machine-learning techniques for land use and land cover classification of the Brazilian tropical savanna using ALOS-2/PALSAR-2 polarimetric images. Remote Sensing, 11 (13), 1600. https://doi.org/10.3390/rs11131600
  • Castillo, G.V., de Freitas, L.J., Cordeiro, V.A., Orellana, J.B., Reategui-Betancourt, J., Nagy, L., & Matricardi, E.A. (2022). Assessment of selective logging impacts using UAV, Landsat, and Sentinel data in the Brazilian Amazon rainforest. Journal of Applied Remote Sensing, 16 (1), 014526. https://doi.org/10.1117/1.jrs.16.014526
  • Cerrada, M., Zurita, G., Cabrera, D., Sánchez, R., Artés, M., & Li, C. (2016). Fault diagnosis in spur gears based on genetic algorithm and random forest. Mechanical Systems and Signal Processing, 70-71, 87-103. https://doi.org/10.1016/j.ymssp.2015.08.030
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  • Islami, F.A., Tarigan, S., Wahjunie, E.D., & Dasanto, B.D. (2022). Accuracy assessment of land use change analysis using google earth in sadar watershed mojokerto regency. IOP Conference Series: Earth and Environmental Science, 950 (1), 012091. https://doi.org/10.1088/1755-1315/950/1/012091
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  • Jombo, S., & Adelabu, S. (2023). Evaluating Landsat-8, Landsat-9, and Sentinel-2 imageries in land use and land cover (LULC) classification in a heterogeneous urban area. GeoJournal, 88 (1), 377-399. https://doi.org/10.1007/s10708-023-10982-8
  • Khaliq, A., Comba, L., Biglia, A., Aimonino, D.R., Chiaberge, M., & Gay, P. (2019). Comparison of satellite and uav-based multispectral imagery for vineyard variability assessment. Remote Sensing, 11 (4), 436. https://doi.org/10.3390/rs11040436
  • Leeuwen, B.V., Tobak, Z., & Kovács, F. (2020). Comparison of different machine learning techniques for land use/land cover classification of medium resolution optical satellite imagery focusing on temporary inundated areas. Journal of Environmental Geography, 13 (1-2), 43-52. https://doi.org/10.2478/jengeo-2020-0005
  • Li, S., & Xu, X. (2021). Study on remote sensing monitoring model of agricultural drought based on random forest deviation correction. INMATEH Agricultural Engineering, 413-422. https://doi.org/10.35633/inmateh-64-41
  • Ma, L., & Fan, S. (2017). Cure-smote algorithm and hybrid algorithm for feature selection and parameter optimization based on random forests. BMC Bioinformatics, 18 (1). https://doi.org/10.1186/s12859-017-1578-z
  • Manessa, M.D.M., Ummam, M.A.F., Efriana, A.F., Semedi, J.M., & Ayu, F. (2024). Assessing Derawan Island’s Coral Reefs over two decades: A machine learning classification perspective. Sensors, 24 (2), 466. https://doi.org/10.3390/s24020466
  • McCorkel, J., Montanaro, M., Efremova, B., Pearlman, A., Wenny, B.N., Lunsford, A., & Reuter, D.C. (2018). Landsat-9 thermal infrared sensor 2 characterization plan overview. IGARSS 2018 - 2018 IEEE International Geoscience and Remote Sensing Symposium, Spain, 8845-8848.
  • Mishra, P.K., Rai, A., & Rai, S.C. (2020). Land use and land cover change detection using geospatial techniques in the Sikkim Himalaya, India. The Egyptian Journal of Remote Sensing and Space Science, 23 (2), 133-143. https://doi.org/10.1016/j.ejrs.2019.02.001
  • Mondal, A., Kundu, S., Chandniha, S.K., Shukla, R., & Mishra, P.K. (2012). Comparison of support vector machine and maximum likelihood classification technique using satellite imagery. International Journal of Remote Sensing and GIS, 1 (2), 116-123.
  • Morgan, G.R., Wang, C., Li, Z., Schill, S.R., & Morgan, D.R. (2022). Deep learning of high-resolution aerial imagery for coastal marsh change detection: a comparative study. ISPRS International Journal of Geo-Information, 11 (2), 100. https://doi.org/10.3390/ijgi11020100
  • Nyamekye, C., Ghansah, B., Agyapong, E., Obuobie, E., Awuah, A., & Kwofie, S. (2021). Examining the performances of true color RGB bands from Landsat-8, Sentinel-2 and UAV as stand-alone data for mapping artisanal and small-scale mining (ASM). Remote Sensing Applications: Society and Environment, 24, 100655. https://doi.org/10.1016/j.rsase.2021.100655
  • Palanisamy, P.A., Jain, K., & Bonafoni, S. (2023). Machine learning classifier evaluation for different ınput combinations: a case study with Landsat 9 and Sentinel-2 data. Remote Sensing, 15 (15), 3241. https://doi.org/10.3390/rs15133241
  • Paul, S., & Kumar, D.N. (2019). Comparison of Landsat-8 and Sentinel-2 data for classification of Rabi crops over Karnataka, India. The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, XLII-3/W6, 579-584. https://doi.org/10.5194/isprs-archives-xlii-3-w6-579-2019
  • Peng, X., Liu, H., Chen, Y., Qiao, C., Wang, J., Li, H., & Zhao, A. (2021). A method to identify dacrydium pierrei hickel using unmanned aerial vehicle multi-source remote sensing data in a chinese tropical rainforest. Journal of the Indian Society of Remote Sensing, 50 (1), 25-35. https://doi.org/10.1007/s12524-021-01453-z
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  • Razafinimaro, A., Hajalalaina, A.R., Rakotonirainy, H.L., & Zafimarina, R. (2022). Land cover classification based optical satellite images using machine learning algorithms. International Journal of Advances in Intelligent Informatics, 8 (3), 362-380. https://doi.org/10.26555/ijain.v8i3.803
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Toplam 63 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Biyosistem
Bölüm Araştırma Makalesi
Yazarlar

Mustafa Özbuldu 0000-0002-5359-8750

Yunus Emre Şekerli 0000-0002-7954-8268

Erken Görünüm Tarihi 3 Aralık 2024
Yayımlanma Tarihi
Gönderilme Tarihi 16 Mayıs 2024
Kabul Tarihi 12 Temmuz 2024
Yayımlandığı Sayı Yıl 2024 Cilt: 29 Sayı: 3

Kaynak Göster

APA Özbuldu, M., & Şekerli, Y. E. (2024). Comparative analysis of different supervised methods for satellite-based land-use classification: A case study of Reyhanlı. Mustafa Kemal Üniversitesi Tarım Bilimleri Dergisi, 29(3), 707-723. https://doi.org/10.37908/mkutbd.1485236

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