DIGITALNA ARHIVA ŠUMARSKOG LISTA
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ŠUMARSKI LIST 1-2/2018 str. 77     <-- 77 -->        PDF

Shridhar, D. J. i J. L. Alvarinho, 2013: A comprehensive evaluation of PAN-sharpening algorithms coupled with resampling methods for image synthesis of very high resolution remotely sensed satellite data. Adv. Remote Sens., 2: 332-344.
Vela, E., I. Medved, V. Miljković, V., 2017: Geostatistička analiza vegetacijskih indeksa na šumskom ekosustavu Česma. Geodetski list, 71(1), 25-40.
Weih R. C., N. D. Riggan, 2010: Object-based classification vs. pixel-based classification: comparative importance of multi-resolution imagery, The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, 38(4/C7): 1-6.
Williams D. L., S. Goward, T. Arvidson, 2006: Landsat. Photogrammetric Engineering & Remote Sensing, 72(10): 1171-1178.
Summary
Demand for high quality free satellite data is increasing. Currently the most popular and known mission is Landsat satellite mission. This mission ensures ground resolution of 30 m x 30 m. For some application, this ground resolution is not sufficient. Landsat mission, starting from the Landsat 7 satellite, collects panchromatic band that is used to increase resolution of images.
This paper analyzes the impact of multispectral and panchromatic image fusion on unsupervised classification. Based on original recordings NDVI (Normalized difference vegetation index) is calculated. This indexed image is used as reference image for the purpose of further comparison. The original images of first four bands (blue, green, red and near-infrared) are sharpened using eighth (panchromatic) band gathered with Landsat 7 satellite. From this bands, based on forth and third band, NDVI is calculated. With this calculation it is conducted pansharpening of reference NDVI image. Images for classification was chosen by comparing obtained images. Selected images was classified with K-means unsupervised classification algorithm, and it was determined that image calculated with bicubic interpolation and sharpened with fast intensity-hue-saturation (FIHS) algorithm on previously sharpened bands represents the best solution.
Key words: image fusion, normalized difference vegetation index, Landsat 7