RELATIONSHIPS BETWEEN EASTERN BEECH FORESTS STAND PARAMETERS AND LANDSAT ETM SPECTRAL RESPONSES IN TURKEY

Volume: 15 Number: 1 March 1, 2013
  • Ayhan Ateşoğlu
  • Metin Tunay
EN TR

RELATIONSHIPS BETWEEN EASTERN BEECH FORESTS STAND PARAMETERS AND LANDSAT ETM SPECTRAL RESPONSES IN TURKEY

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Anahtar Kelimeler

References

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Investigating relationships between Landsat ETM sensor data and leaf area index in a boreal conifer forest. Remote Sensing of Environment, 78, 239–251. o Fazakas, Z., Nilsson, M., Olsson, H., 1999. Regional forest biomass and wood volume estimation using satellite data and ancillary data. Agricultural Forest meteorology, 98-99, 417-425. o Freitas, S.R., Mello, M.C.S., Cruz, C.B.M., 2005. Relationship between forest structure and vegetation indices in Atlantic Rainforest. Forest Ecology and Management, 218, 353-362. o Gong, P., Pu, R., Miller, J.R., 1995. Coniferous forest leaf area index estimation along the Oregon transects using compact airborne spectrographic imager data. Photogrammetric Engineering & Remote Sensing, 61, 1107–1117. o Goodenoughl, D.G., Deguisel, J., Robson, M.A., 1990. Multiple expert systems for using digital terrain models. In. Proceedings of IGARS’90, Washington, pp. 96. o Hall, R., J., Skakun, R., S., Arsenault, E., J., Case, B., S., 2006. 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Estimating aboveground biomass using Landsat 7 ETM+ data across a managed landscape in northern Wisconsin, USA. Remote Sensing of Environment, 93, 402-411.

Details

Primary Language

Turkish

Subjects

-

Journal Section

-

Authors

Ayhan Ateşoğlu This is me

Metin Tunay This is me

Publication Date

March 1, 2013

Submission Date

August 3, 2014

Acceptance Date

-

Published in Issue

Year 2013 Volume: 15 Number: 1

APA
Ateşoğlu, A., & Tunay, M. (2013). RELATIONSHIPS BETWEEN EASTERN BEECH FORESTS STAND PARAMETERS AND LANDSAT ETM SPECTRAL RESPONSES IN TURKEY. Bartın Orman Fakültesi Dergisi, 15(1), 76-87. https://izlik.org/JA53WL64NG

 

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