KİTLE KAYNAĞIN UZAKTAN ALGILAMADA KULLANIMI
Year 2018,
Volume: 13 Issue: 1, 37 - 52, 19.01.2018
Ekrem Saralıoğlu
,
Oğuz Güngör
Abstract
Uzaktan algılama yöntemleri ile
elde edilen veriler ile arazi okyanus ve atmosfer özellikleri hakkında bilgi
sağlanır. Bu veriler işlenerek çok çeşitli çevresel araştırmalar ve Coğrafi
Bilgi Sistemi uygulamaları yapılmaktadır. Bilgisayar teknolojilerinde meydana
gelen büyük gelişmelere rağmen, uydu verilerinin analizi ve yorumlamasında
çeşitli zorluklar meydana gelmektedir. Bu zorlukların aşımında kitle kaynak
kullanılabilir. Kitle kaynak; veri elde etme, problem çözme gibi çeşitli
uygulamalarda insanların kullanılmasıdır. Kitle kaynak ile kolayca
çözümlenemeyen problemlere çözüm bulunabildiği gibi, çeşitli uygulamaların
yapımında harcanan zaman, maliyet ve çaba da azalmaktadır. Bu çalışmada
sistematik bir literatür taraması yapılarak, uzaktan algılama biliminde kitle
kaynağın kullanım alanları incelenmiştir. Yapılan çalışma, uzaktan algılama
biliminde kitle kaynağın kullanımının oldukça yeni olduğunu göstermektedir.
Ayrıca bu konudaki makalelerin
çoğunluğunun 2016 ve sonrasında yayınlanmaya başlandığı görülmektedir. Basılan
yayınlara göre kitle kaynak, uzamsal problemlerin çözümünde geleneksel
algoritmalara oranla çok daha doğru sonuç veren çözümler üretebilmektedir.
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Year 2018,
Volume: 13 Issue: 1, 37 - 52, 19.01.2018
Ekrem Saralıoğlu
,
Oğuz Güngör
References
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- 3. Silvestri, S. and Omri, M., (2008). A Method for the Remote Sensing Identification of Uncontrolled Landfills: Formulation and Validation. International Journal of Remote Sensing, 29(4), 975-989.
- 4. Tang, A.P., Ran, C., Wang, L.F., Gai, L.H., and Dai, M., (2009). Intelligent Digital System in Urban Natural Hazard Mitigation, World Congress on Software Engineering, 2, 355-359.
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- 6. Du, P.J., Liu, P., and Luo, Y., (2009). Urban Thermal Environment Simulation and Prediction Based on Remote Sensing and GIS, IEEE International Geoscience and Remote Sensing Symposium, 1-5, 2357-2360.
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